{"id":698,"date":"2022-02-11T17:39:54","date_gmt":"2022-02-11T17:39:54","guid":{"rendered":"http:\/\/databionics-institute.org\/?page_id=698"},"modified":"2022-02-14T10:34:13","modified_gmt":"2022-02-14T10:34:13","slug":"publications","status":"publish","type":"page","link":"https:\/\/databionics-institute.org\/index.php\/publications","title":{"rendered":"Publications"},"content":{"rendered":"\t\t<div data-elementor-type=\"wp-page\" data-elementor-id=\"698\" class=\"elementor elementor-698\" data-elementor-settings=\"[]\">\n\t\t\t<div class=\"elementor-inner\">\n\t\t\t\t<div class=\"elementor-section-wrap\">\n\t\t\t\t\t\t\t<section class=\"elementor-element elementor-element-7139d8c5 elementor-section-boxed elementor-section-height-default elementor-section-height-default elementor-section elementor-top-section\" data-id=\"7139d8c5\" data-element_type=\"section\">\n\t\t\t\t\t\t<div class=\"elementor-container elementor-column-gap-default\">\n\t\t\t\t<div class=\"elementor-row\">\n\t\t\t\t<div class=\"elementor-element elementor-element-440f61ab elementor-column elementor-col-100 elementor-top-column\" data-id=\"440f61ab\" data-element_type=\"column\">\n\t\t\t<div class=\"elementor-column-wrap  elementor-element-populated\">\n\t\t\t\t\t<div class=\"elementor-widget-wrap\">\n\t\t\t\t<div class=\"elementor-element elementor-element-3a2fe41b elementor-widget elementor-widget-text-editor\" data-id=\"3a2fe41b\" data-element_type=\"widget\" data-widget_type=\"text-editor.default\">\n\t\t\t\t<div class=\"elementor-widget-container\">\n\t\t\t\t\t<div class=\"elementor-text-editor elementor-clearfix\"><p><strong style=\"letter-spacing: 0px;\">2020<\/strong><strong style=\"letter-spacing: 0px;\">&nbsp;<\/strong><br><\/p><p><strong>Ultsch, A., L\u00f6tsch, J.:<\/strong> The Fundamental Clustering and Projection Suite (FCPS): A data set collection to test the performance of clustering and data projection algorithms<em>, Scientific Data<\/em><em>, Vol.5(1), 2020.<\/em><strong>&nbsp;<\/strong><\/p><p><strong>Hoffmann, J., Rother, M., Kaiser, U., Thrun, M. C.,&nbsp;Wilhelm, C., Gruen, A., Niebergall, U., Meissauer, U., Neubauer, A., Brendel, C.:&nbsp;<\/strong> Determination of CD43 and CD200 surface expression&nbsp;improves accuracy of B-cell lymphoma immunophenotyping,&nbsp;<em>Cytometry Part&nbsp;B: Clinical&nbsp;Cytometry, 2020. (accepted)<\/em><strong>&nbsp;<\/strong><\/p><p><strong>Lerch, F.,&nbsp; Ultsch, A., L\u00f6tsch, J.:<\/strong> Distribution Optimization: An evolutionary algorithm to separate Gaussian mixtures, <em>Sci Reports 2020. (accepted)<\/em>&nbsp;<\/p><p><strong>L\u00f6tsch, J., Ultsch, A.:<\/strong> <a title=\"20l\u00f6tschprojectionmethod\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/20loetschprojectionmethod.pdf\">Current Projection Methods-Induced Biases at Subgroup Detection for Machine-Learning Based Data-Analysis of Biomedical Data<\/a>, <em>International Journal of Molecular Sciences, 2020.<\/em><strong>&nbsp;<\/strong><\/p><p><strong>Thrun, M.C.:&nbsp;<\/strong> Improving the Sensitivity of Statistical Testing for&nbsp;Clusterability with Mirrored-Density Plot,&nbsp;in Archambault, D., Nabney,&nbsp;I. &amp;&nbsp;Peltonen, J. (eds.), Machine Learning Methods in Visualisation&nbsp;for Big Data, The Eurographics Association,&nbsp;Norrk\u00f6ping , Sweden, 2020.<strong>&nbsp;<\/strong><\/p><p><strong>Thrun, M.C., Ultsch, A.:<\/strong>&nbsp;<a title=\"Clustering\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/20clustering.pdf\">Clustering Benchmark Datasets Exploiting the Fundamental Clustering Problems<\/a>, Data in Brief, Vol. 30(C), 2020.<strong>&nbsp;<\/strong><\/p><p><strong>Thrun<\/strong><em>,<\/em> <strong>M.C<em>.,<\/em> Ultsch, A.:<\/strong> <a href=\"https:\/\/www.sciencedirect.com\/science\/article\/abs\/pii\/S0004370220300047\" target=\"_blank\" rel=\"noopener\"> Swarm Intelligence for Self-Organized Clustering, Journal of Artificial Intelligence, 2020. (in press)<\/a><\/p><p><strong style=\"letter-spacing: 0px;\">Thrun, M.C., Ultsch, A.:&nbsp;<\/strong><span style=\"letter-spacing: 0px;\"> Swarm Intelligence for Self-Organized Clustering&nbsp;(Extended Abstract) in Helmert, M. (Ed.), <\/span><em style=\"letter-spacing: 0px;\">29th International Joint&nbsp;Conference on Artificial Intelligence (IJCAI), Yokohama,&nbsp;Japan, 2020. (accepted)<\/em><\/p><p><strong>&nbsp;<\/strong><strong>Thrun, M.C., Ultsch, A.:<\/strong>&nbsp;Using Projection based Clustering to Find Distance and Density based Clusters in High-Dimensional Data, <em>Journal&nbsp;of Classification, Springer, 2020. (accepted)<\/em><\/p>\n<p><strong>2019<\/strong><\/p>\n<p><strong>Ultsch, A., Hoffman, J., Brendel, C.:<\/strong> <a title=\"19esomsamplingasatool.pdf\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/19esomsapmpling.pdf\">ESOM Sampling as a Tool for Detection of Needles in the Haystack of Big Data in Medical Diagnostic Technologies<\/a>, <em>in: Kestler, H.A., Schmid, M., Lausser, L., F\u00fcrstberger, A., (eds): Statistical Computing 2019, Ulmer Informatik-Bericht, pp. 2-3, 2019.<\/em><strong><br><\/strong><\/p>\n<p><strong>Lippmann, C.,<\/strong> <strong>Ultsch, A.,<\/strong> <strong>L\u00f6tsch, J.:<\/strong> Computational functional genomics-based reduction of disease-related gene sets to their key components<strong>,<\/strong> <em>Bioinformatics<\/em>, <em>Vol 35(14), pp. 2362-2370, 2019<\/em>.<\/p>\n<p><strong>L\u00f6tsch, J., Ultsch, A.:<\/strong> <a title=\"19Predictivityofprclinicalstudies\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/19generativepreclinicalstudies.pdf\">Generative artificial intelligence based algorithm to increase the predictivity of preclinical studies while keeping sample sizes small<\/a>, <em>in: Kestler, H.A., Schmid, M., Lausser, L., F\u00fcrstberger, A., (eds): Statistical Computing 2019, Ulmer Informatik-Bericht, pp. 29-30, 2019.<\/em><strong><br><\/strong><\/p>\n<p><strong>L\u00f6tsch, J., Ultsch, A., Kalso, E.:<\/strong> Data-science based subgroup analysis of persistent pain during three years after breast cancer sugery<strong>,<\/strong> <em>European Journal of Anaesthesiology, 2019.<\/em> (accepted)<\/p>\n<p><strong>2018<\/strong><\/p>\n<p><strong>Ultsch, A., Maul, C.:<\/strong> <a title=\"ultschFines Structure of Thermals\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/18ultschmaulostuvbremen1.pdf\">Fine structure of thermals in arid climate: Glider-based in flight measurements<\/a>, <em>Meteorological Panel<\/em>, <em>Conf. International Scientific and Technical Soaring Organization (OSTIV), Bremen, 2018.<\/em><\/p>\n<p><strong>Brendel, C., Mack, E., Frech, M., Neubauer, A., Haferlach, T., Ultsch, A.:<\/strong> <a title=\"Poster Brendel\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/18brendelposter.pdf\">Identification of specific cluster of differentiation genes in acute myeloid leukemia by combined Bayesian and ABC analysis,<\/a> <em>poster, 2018.<\/em><\/p>\n<p><strong>Kringel, D., Lippmann, C. , Parnham, M.J., Kalso, E., Ultsch, A., L\u00f6tsch, J<\/strong>.<strong>:<\/strong> A machine-learned analysis of human gene polymorphisms modulating persisting pain points to major roles of neuroimmune processes, <em>in press for European Journal of Pain,Wiley,2018.<\/em><\/p>\n<p><strong>Lippmann, C., Kringel, D., Ultsch, A., L\u00f6tsch, J.:<\/strong> Computational functional genomics-based approaches in analgesic drug discovery and repurposing, <em>Pharmacogenomics, Vol. 19, No. 9, pp. 783-797, 2018.<\/em><\/p>\n<p><strong>L\u00f6tsch, J., Ultsch, A.:<\/strong> Machine learning in pain research, <em>Pain, Vol. 159, pp. 623-630, 2018.<\/em><\/p>\n<p><strong>L\u00f6tsch, J., Geisslinger, G., Heinemann, S., Lerch, F., Oertel, B.G., Ultsch, A.:<\/strong> <a title=\"qstpain\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/18loetschultschqatpain.pdf\">Quantitative sensory testing response patterns to capsaicin- and ultraviolet-B-induced local skin hypersensitization in healthy subjects: a machine-learned analysis,<\/a> <em>Pain, Vol. 159, pp. 11-24, 2018.<\/em><\/p>\n<p><strong>L\u00f6tsch, J., Lerch, F., Djaldetti, R., Tegeder, I., Ultsch, A.:<\/strong> <a title=\"identification of deisease\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/18loetschultschbiomarkerlipideumatrixesomr.pdf\">Idendtification of disease-distinct complex biomarker patterns by means of unsupervised machine-learning using an interactive R toolbox (Umatrix)<\/a>, <em>BMC Big Data Analytics, pp. 1-17, 2018.<\/em><\/p>\n<p><strong>L\u00f6tsch, J., Schiffmann, S., Schmitz, K., Brunkhorst, R., Lerch, F., Ferreiros, N., Wicker, S., Tegeder, I., Geisslinger, G., Ultsch, A.:<\/strong> Machine-learning based lipid mediator serum concentration patterns allow identification of multiple sclerosis patients with high accuracy, <em>Scientific Reports, Vol. 8 (1), 2018.<\/em><strong><br><\/strong><\/p>\n<p><strong>L\u00f6tsch, J., Sipil\u00e4, R., Tasmuth, T., Kringel, D., Estlander, A.M., Meretoja, T., Kalso, E., Ultsch, A.:<\/strong> Machine-learning-derived classifier predicts absence of persistent pain after breast cancer surgery with high accuracy<strong>,<\/strong> <em>Breast Cancer Res Treat, Vol.171(2), pp. 399-411<\/em><strong>,<\/strong> <em>2018<\/em><strong>.<br><\/strong><\/p>\n<p><strong>Mack, E.K.M., Marquardt, A., Langer, D., Ross, P., Ultsch, A., Kiehl, M.G., Mack, H.I.D., Haferlach, T., Neubauer. A., Brendel, C.:<\/strong> Comprehensive genetic diagnosis of acute myeloid leukemia by next generation sequencing, <em>Haematologica, ahead of print, 2018.<\/em><\/p>\n<p><strong>Mascus, E., Sistach, M.U., Soler, M.R., Ultsch, A., Maul, C.:<\/strong> <a title=\"Exploring gravity waves in the Pyrenees\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/metpanelabstract2058mascus.pdf\">Exploring gravity waves in the Pyrenees by ground based observations, in-flight measurements, and model analysis<\/a>, <em>Meteorological Panel<\/em>, <em>Conf. International Scientific and Technical Soaring Organization (OSTIV), Bremen, 2018.<\/em><\/p>\n<p><strong>Thrun, M. C., Ultsch, A.:<\/strong> Effects of the payout system of income taxes to municipalities in Germany, <em>in Papie\u017c, M. &amp; \u015amiech, S. (eds.), Proc. 12th Professor Aleksander Zelias International Conference on Modelling and Forecasting of Socio-Economic Phenomena, pp. 533-542, Cracow: Foundation of the Cracow University of Economics, Cracow, Poland, 2018.<\/em><\/p>\n<p><strong>Thrun, M. C., Ultsch, A.:<\/strong> <a href=\"http:\/\/groups.uni-paderborn.de\/eim-i-fg-huellermeier\/ecda2018\/downloads\/ECDA2018-BoA.pdf\" target=\"_blank\" rel=\"noopener\"> Investigating Quality measurements of projections for the Evaluation of Distance and Density-based Structures of High-Dimensional Data<\/a>, <em>Proc. European Conference on Data Analysis (ECDA), pp. 45-46, Paderborn, Germany, 2018.<\/em><\/p>\n<p><strong>Thrun, M. C., Breuer, L., Ultsch, A.:<\/strong> <a href=\"http:\/\/groups.uni-paderborn.de\/eim-i-fg-huellermeier\/ecda2018\/downloads\/ECDA2018-BoA.pdf\" target=\"_blank\" rel=\"noopener\"> Knowledge discovery from low-frequency stream nitrate concentrations: hydrology and biology contributions<\/a><strong>,<\/strong> <em>Proc. European Conference on Data Analysis (ECDA), pp. 46-47, Paderborn, Germany, 2018.<\/em><\/p>\n<p><strong>Thrun, M. C., Pape, F., Ultsch, A.:<\/strong> <a href=\"http:\/\/groups.uni-paderborn.de\/eim-i-fg-huellermeier\/ecda2018\/downloads\/ECDA2018-BoA.pdf\" target=\"_blank\" rel=\"noopener\"> Benchmarking Cluster Analysis Methods using PDE-Optimized Violin Plots<\/a>, <em>Proc. European Conference on Data Analysis (ECDA) pp. 26, Paderborn, Germany, 2018.<\/em><\/p>\n<p>2017<\/p>\n<p><strong>Ultsch, A., Behnisch, M.:<\/strong> <a href=\"http:\/\/www.sciencedirect.com\/science\/article\/pii\/S0143622817301248\" target=\"_blank\" rel=\"noopener\"> Effects of the payout system of income taxes to municipalities in Germany<\/a>, <em>Applied Geography, Vol. 81, pp. 21-31, 2017.<\/em><\/p>\n<p><strong>Ultsch, A., L\u00f6tsch, J<\/strong>.: <a title=\"Machine-learned cluster identification\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/17ultschgolfballbiomedinformatics.pdf\">Machine-learned cluster identification in high-dimensional data<\/a>, <em>Journal of Biomedical Informatics<\/em>, Vol. 66, pp. 95-104, 2017.<\/p>\n<p><strong>Ultsch, A., L\u00f6tsch, J.:<\/strong> <a title=\"Generative learning with emergent self\u2010organizing neuronal networks\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/17tokyogenerativesomv02.pdf\">Generative learning with emergent self-organizing neuronal networks<\/a>, <em>accepted for publication at Conf. Int. Federation of Classification Societies, Tokyo, 2017.<\/em><\/p>\n<p><strong>Ultsch, A., Thrun, M.:<\/strong> <a title=\"credible visualizations\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/17utschthrungumatrixwsom.pdf\">Credible Visualizations for Planar Projections<\/a>, <em>Proc. Workshop on Self-Organizing Maps (WSOM), pp. 256-260, Nancy, 2017.<\/em><\/p>\n<p><strong>L\u00f6tsch, J., Ultsch, A.:<\/strong> <a title=\"Random forests followed by ABC analysis as a feature selection procedure for machine\u2010learning\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/17tokyoloetschultschrandomforestsabc.pdf\">Random forests followed by ABC analysis as a feature selection procedure for machine\u2010learning<\/a>, <em>Conf. Int. Federation of Classification Societies, Tokyo, 2017.<\/em><strong><br><\/strong><\/p>\n<p><strong>L\u00f6tsch, J., Ultsch, A.:<\/strong> <a title=\"Gini\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/17loetschgini.pdf\">A data science based standardized Gini index as a Lorenz dominance preserving measure of the inequality of distributions<\/a>, <em>PLOS ONE, Vol. 12(8), August, 2017.<\/em><\/p>\n<p><strong>L\u00f6tsch, J., Ultsch, A., Kalso, E.:<\/strong> Prediction of persistent post-surgery pain by preoperative cold pain sensitivity: Biomarker development with machine-learning-derived analysis, <em>British Journal of Anaesthesia, Vol. 119, pp. 821-829, 2017.<\/em><\/p>\n<p><strong>L\u00f6tsch, J., Lippmann, C., Kringel, D., Ultsch, A.:<\/strong> <a title=\"Gene Associated\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/17loetschgeneassociated.pdf\">Integrated computational analysis of genes associated with human hereditary intensitivity to pain. A drug repurposing perspective<\/a>, <em>Frontiers in Molecular Neuroscience, August, 2017.<\/em><strong><br><\/strong><\/p>\n<p><strong>L\u00f6tsch, J., Sipila, R., Tasmuth, T., Kringel, D., Estlander, A.-M., Meretoja, T., Kalso, E., Ultsch, A.:<\/strong> A machine-learning-derived classifier predicts absence of persistent pain after breast cancer surgery with high accuracy, <em>under review for Pain, 2017.<\/em><\/p>\n<p><strong>L\u00f6tsch, J., Thrun, M., Lerch, F., Brunkhorst, R., Schiffmann, S., Thomas, D., Tegder, I., Geisslinger, G., Ultsch, A.:<\/strong> <a href=\"http:\/\/www.mdpi.com\/1422-0067\/18\/6\/1217\" target=\"_blank\" rel=\"noopener\">Machine-learned data structures of lipid marker serum concentrations in multiple sclerosis patients differ from those in healthy subjects<\/a>, <em>Int. J. Mol. Sci<\/em>., Vol. 18(6), 2017.<\/p>\n<p><strong>Thrun, M., Ultsch, A.:<\/strong> <a title=\"Projection based Clustering\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/17ifcsthrunultschprojectedbasedclusteringabstractv2.pdf\">Projection based Clustering<\/a>, <em>Conf. Int.<\/em> <em>Federation of Classification Societies, Tokyo, 2017.<\/em><\/p>\n<p><strong>&nbsp;<\/strong><\/p>\n<p><strong>2016<\/strong><\/p>\n<p><strong>Ultsch, A., Behnisch, M., L\u00f6tsch, J.<\/strong>: <a title=\"Esom Visualizations for Quality\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/16ultschloetschwsomhustonauslustering.pdf\">ESOM Visualizations for Quality Assessment in Clustering<\/a>, <em>In: Mer\u00e9nyi, E., Mendenhall, J. M., O&#8217;Driscoll, P., (Eds.): Advances in Self-Organizing Maps and Learning Vector Quantization, Proc. WSOM, Houston, Texas, USA, pp. 39-48, Springer, New York, 2016.<\/em><\/p>\n<p><strong>Ultsch, A., Curtius, J., Maul, C.:<\/strong> <a title=\"lee waves\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/16maulultschleewavestechsoar04.pdf\">Data&nbsp;Mining for Atmospheric Gravity Waves (Lee Waves)<\/a>, <em>Technical Soaring, Vol. 40, No. 3, 2016.<\/em><\/p>\n<p><strong>Ultsch, A., Kringel, D., Kalso, E., Mogil, J. S., L\u00f6tsch, J.<\/strong>: <a href=\"http:\/\/www.ncbi.nlm.nih.gov\/pubmed\/27548044\" target=\"_blank\" rel=\"noopener\">A data science approach to candidate gene selection of pain regarded as a process of learning and neural plasticity<\/a>, <em>Pain, Vol. 157,<\/em> pp<em>.<\/em> 2747-2757, 2016.<\/p>\n<p><strong>Aubert, A. H., Thrun, M. C., Breuer, L., Ultsch, A.<\/strong>: <a title=\"Knowledge discovery from high-frequency\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/16hydrologieaubertultsch.pdf\">Knowledge discovery from high-frequency stream nitrate concentrations: hydrology and biology contributions<\/a>, <em>Scientific Reports, Nature, Vol. 6<\/em>(31536), pp. 1-8, 2016.<strong><br><\/strong><\/p>\n<p><strong>Knothe, C., Doehring, A., Ultsch, A., L\u00f6tsch, J.<\/strong>: <a href=\"http:\/\/www.ncbi.nlm.nih.gov\/pubmed\/26340303\" target=\"_blank\" rel=\"noopener\">Methadone induces hypermethylation of human DNA<\/a>, <em>Epigenomics, Vol. 8<\/em>(2), pp. 167-179, 2016.<\/p>\n<p><strong>Knothe, C., Oertel, B.G., Ultsch, A., Kettner, M., Schmidt, P.H., Wunder, C., Toennes, S.W., Geisslinger, G., L\u00f6tsch, J<\/strong>.: <a href=\"https:\/\/www.ncbi.nlm.nih.gov\/pubmed\/27685027\" target=\"_blank\" rel=\"noopener\">Pharmacoepigenetics of the role of DNA methylation in \u00b5-opioid receptor expression in different human brain regions<\/a>, <em>Epigenomics,<\/em> 2016<strong>.<\/strong><\/p>\n<p><strong>Knothe, C., Shiratori, H., Resch, E., Ultsch, A., Geisslinger, G., Doehring, A., L\u00f6tsch, J.<\/strong>: <a title=\"Disagreement between two common biomarkers\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/16knothedisagreementbetweentwocommon.pdf\">Disagreement between two common biomarkers of global DNA methylation<\/a>, <em>Clinical Epigenetics, Vol. 8<\/em>:60, pp. 1-17, 2016.<\/p>\n<p><strong>Kringel, D., Ultsch, A., et al.<\/strong> : <a title=\"Emergent biomarker derived from nex generation\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/16kringelultschbiomarker.pdf\">Emergent biomarker derived from next-generation sequencing to identify pain patients requiring uncommonly high opioid doses<\/a>, <em>The Pharmacogenomics Journal, 5, pp. 1-8, 2016.<\/em><\/p>\n<p><strong>L\u00f6tsch, J.<\/strong><strong>, Ultsch, A. :<\/strong> <a href=\"https:\/\/www.ncbi.nlm.nih.gov\/pubmed\/27695919\" target=\"_blank\" rel=\"noopener\">A machine-learned computational functional-genomics based approach to drug classification<\/a>, <em>European Journal of Clinical Pharmacology,<\/em> Volume 72, Issue 12, pp. 1449-1461, 2016.<\/p>\n<p><strong>L\u00f6tsch, J., Ultsch, A.<\/strong>: <a title=\"A comtational functional genomics based self-limiting\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/16loetschultschjumpinggenes.pdf\">A computational functional genomics based self-limiting self-concentration mechanism of cell specialization as a biological role of jumping genes<\/a>, <em>Integrative Biology, The Royal Society of Chemistry, Vol. 8(1), pp. 91-103, 2016.&nbsp;<\/em><\/p>\n<p><strong>L\u00f6tsch, J., Ultsch, A.<\/strong>: <a title=\"A \u00fcharmacological Data Science\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/16loetschultschaphrmacologiacaldatascience.pdf\">Process Pharmacology: A Pharmacological Data Science Approach to Drug Development and Therapy<\/a>, Pharmacometrics &amp; Systems Pharmacology, Vol. 5(4), pp. 192-200, 2016.<\/p>\n<p><strong>L\u00f6tsch, J., Ultsch, A.:&nbsp;<\/strong> Process pharmacology: Using computational functional genomics knowledge to connect drugs with biological processes, In<strong>:<\/strong> F\u00fcrstenberg, et al., H.A., (Eds), Proc. Statistical Computing, Universty of Ulm, p. 3, Ulm, 2016.<strong><br><\/strong><br><strong>L\u00f6tsch, J., Ultsch, A., Eckhard, M., Huart, C., Rombaux, P., Hummel, T.<\/strong>: <a title=\"Brain lesion-pattern analysis\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/16loetschultschbrainlesio-patternanalysisinpatients.pdf\">Brain lesion-pattern analysis in patients with olfactory dysfunctions following head trauma<\/a><strong>,<\/strong> Neuroimage Clin., Vol. 11, pp. 99-105, 2016.<br><strong><br>L\u00f6tsch, J., Ultsch, A., Hummel, T<\/strong>.:&nbsp; <a title=\"A unifying Data-Driven Model of Human\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/16loetschultschhumanolfactory.pdf\">A unifying data driven model of human olfactory pathology representing known etiologies of dysfunction<\/a>, <em>Chem Senses, Vol. 00<\/em>, <em>pp.<\/em> 1-8, 2016.<\/p>\n<p><strong>L\u00f6tsch, J., Ultsch, A., Hummel, T.<\/strong>: <a href=\"https:\/\/www.ncbi.nlm.nih.gov\/pubmed\/26857742\" target=\"_blank\" rel=\"noopener\">How Many and Which Odor Identification Items Are Needed to Establish Normal Olfactory Function?<\/a>, Chemical Senses, Vol. 41(4), pp. 339-344, 2016.<\/p>\n<p><strong>L\u00f6tsch, J., Dimova, V., Ultsch, A., et al.<\/strong> : <a href=\"https:\/\/www.ncbi.nlm.nih.gov\/pubmed\/26492152\" target=\"_blank\" rel=\"noopener\">A small yet comprehensive subset of human experimental pain models emerging from correlation analysis with a clinical quantitative sensory testing protocol in healthy subjects<\/a>, European Journal of Pain, Vol. 20, pp. 777-789, 2016.<br><strong><br>L\u00f6tsch, J., H\u00e4hner, A., Gorau, G., Hummel, C., Walter, C., Ultsch, A., Hummel, T.<\/strong>: <a href=\"http:\/\/www.ncbi.nlm.nih.gov\/pubmed\/27152690\" target=\"_blank\" rel=\"noopener\">The smell of pain: intersection of nociception and olfaction<\/a>, <em>Pain 5, 2016.<\/em><strong><em><br><\/em><br><\/strong><\/p>\n<p><strong>L\u00f6tsch, J., Hummel, T., Ultsch, A.:<\/strong> <a href=\"https:\/\/www.ncbi.nlm.nih.gov\/pubmed\/27762302\" target=\"_blank\" rel=\"noopener\">Machine-learned pattern identification in olfactory subtest results<\/a><strong><a href=\"https:\/\/www.ncbi.nlm.nih.gov\/pubmed\/27762302\" target=\"_blank\" rel=\"noopener\">,<\/a>&nbsp;<\/strong> <em>Nature Scientific Reports, October, pp. 1-8, 2016.<\/em><\/p>\n<p><strong>Mack, E., Langer, D., Marquardt, A., Ultsch, A., Kiehl, M. G., Neubauer, A., Brendel C. A.<\/strong>: <a href=\"https:\/\/ash.confex.com\/ash\/2016\/webprogram\/Paper90967.html\" target=\"_blank\" rel=\"noopener\">Comprehensive Genetic Diagnostics of Acute Myeloid Leukemia By Next Generation Sequencing<\/a><strong>,<\/strong> <em>Proceeding of 58th Annual Meeting &amp; Exposition, San Diegeo, CA, 2016.<\/em><\/p>\n<p><strong>Thrun, M. C., Lerch, F., L\u00f6tsch, J., Ultsch, A.<\/strong>: <a title=\"3 D Druck\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/2016thrun_3ddruck_wscg.pdf\">Visualization and 3D Printing of Multivariate Data of Biomarkers<\/a>, I<em>n: Skala, V. (Ed.): Conf. on Computer Graphics, Visualization and Computer Vision, Plzen, pp. 1-384, 2016.<\/em><\/p>\n<p><strong>&nbsp;<\/strong><\/p>\n<p><strong>2015<\/strong><\/p>\n<p><strong>Ultsch, A., L\u00f6tsch, J.:<\/strong> <a href=\"http:\/\/www.ncbi.nlm.nih.gov\/pubmed\/26061064\" target=\"_blank\" rel=\"noopener\">Computed ABC analysis for rational selection of most informative variables in multivariate data<\/a>, <em>PloS one, Vol. 10(6), pp. 1-15, 2015.<\/em><\/p>\n<p><strong>Ultsch, A., Kretschmer, O., Behnisch, M.:<\/strong> <a href=\"http:\/\/web.mit.edu\/cron\/project\/CUPUM2015\/proceedings\/Content\/analytics\/301_ultsch_h.pdf\" target=\"_blank\" rel=\"noopener\"> Systematic Data-Mining into Land Consumption in Germany<\/a>, <em>in: Ferreira Jr.,&nbsp;J.,&nbsp;Goodspeed, R. (eds.), Planning Support Systems and Smart Cities, Cambridge, MA, pp. 301-1 &#8211; 301-19, 2015.<\/em><\/p>\n<p><strong>Ultsch, A., McGrath, A.:<\/strong> <a title=\"Clustering and Classification\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/clustering.pdf\">Clustering and Classification of Infrared Hyperspectral Aerial images<\/a>, <em>European Conference on Data Analysis, p. 37, Colchester, 2015.<\/em><\/p>\n<p><strong>Ultsch, A., Rogos, C., Maul, C.:<\/strong> <a title=\"Data Mining in Atmospheric\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/datamining.pdf\">Data Mining in Atmospheric Gravity Waves<\/a>, <em>European Conference on Data Analysis, p. 108, Colchester, 2015.<\/em><\/p>\n<p><strong>Ultsch, A., Schnabel, S.,<\/strong> <strong>Thrun, M. C.<\/strong>: <a href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/gmmabstract.pdf\/\">Models of Income Distributions for Knowledge Discovery<\/a>, <em>European Conference on Data Analysis, pp. 136-137<\/em><em>, Colchester, 2015.<\/em><\/p>\n<p><strong>Ultsch, A., Thrun, M.C., Hansen-Goos, O., L\u00f6tsch, J.:<\/strong> <a title=\"Identification of Molecular Fingerprints\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/identification.pdf\">Identification of Molecular Fingerprints in Human Heat Pain Thresholds by Use of an Interactive Mixture Model R Toolbox(AdaptGauss)<\/a>, <em>International Journal of Molecular Sciences, Vol. 16, pp. 25897-25911, 2015.<\/em><\/p>\n<p><strong>Ultsch, A., Weingart, M., L\u00f6tsch, J.:<\/strong> 3-D printing as a tool for knowledge discovery in high dimensional data spaces, i<em>n: Kestler, H.A., Schmid, M., Kraus, J.M., Lausser, L., F\u00fcrstberger, A. (eds): Statistical Computing 2015, Ulmer Informatik-Berichte, pp. 12, 2015.<\/em><\/p>\n<p><strong>Behnisch, M., Ultsch, A.:<\/strong> <a href=\"http:\/\/link.springer.com\/chapter\/10.1007\/978-3-319-11469-9_3\" target=\"_blank\" rel=\"noopener\">Knowledge Discovery in Spatial Planning Data &#8211; A Concept for Cluster Understanding<\/a>, <em>in: Helbich, M., Arsanjani, J. J., Leitner, M. (eds.): Computational Approaches for Urban Environments, in: Gatrell, J.D., Jensen, R.R.: Geotechnologies and the Environment Series, Vol, 13,&nbsp;Springer, Berlin, pp. 49-75, 2015.<\/em><\/p>\n<p><strong>Behnisch, M., Ultsch, A.:<\/strong> Does Landscape Attractiveness affect Land Consumption in Germany?, <em>European Conference on Data Analysis, pp. 109-110, Colchester, 2015.<\/em><\/p>\n<p><strong>Behnisch, M., Kretschmer, O., Schwarzak, M., Ultsch, A.:<\/strong> <a href=\"https:\/\/www.erdkunde.uni-bonn.de\/archive\/2015\/towards-an-understanding-of-land-consumption-in-germany-2013-outline-of-influential-factors-as-a-basis-for-multidimensional-analyses\" target=\"_blank\" rel=\"noopener\"> Towards an Understanding of Land Consumption in Germany\u2013 Outline of Influential Factors as a Basis for Multidimensional Analyses<\/a>, <em>in: Erdkunde &#8211; Archive for Scientific Geography, Vol. 69 (3), pp. 267-279, 2015.<\/em><\/p>\n<p><strong>Dimova, V., Oertel, B.G., Kabakci, G.,<\/strong> <strong>Zimmermann, M., Hermens, H., Lautenbacher, S., Ultsch, A., L\u00f6tsch, J.:<\/strong> <a title=\"15dimovaneropathy-like\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/15dimovaneropathylike.pdf\">A more pessimistic life-orientation is associated with experimental inducibility of neuropathy-like pain pattern in healthy subjects<\/a>, <em>J Pain, pp. 791-800, 2015.<\/em><\/p>\n<p><strong>Knothe, C., Doehring, A., Ultsch, A., L\u00f6tsch.:<\/strong> <a title=\"Methadone induces hypermethylation of human DNA\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/methadone.pdf\">Methadone induces hypermethylation of human DNA<\/a>, <em>2015.<\/em><\/p>\n<p><strong>Kringel, D., Ultsch, A., Zimmermann, M., Jansen, JP., Ilias, W., Freynhagen, R., Griessinger, N., Kopf, A., Stein, C., Doehring, A., Resch, E., L\u00f6tsch, J<\/strong>.: Emergent biomarker derived from next generation sequencing to identify pain patients requiring uncommonly high opioid doses, <em>Pharmacogenomics J, 2015.<\/em><\/p>\n<p><strong>Lippmann, C., L\u00f6tsch, J., Ultsch, A.:<\/strong> <a title=\"Understanding the Biological Functions\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/understanding.pdf\">Understanding the Biological Functions of Gene Sets<\/a>, <em>European Conference on Data Analysis, pp. 28-29, Colchester, 2015.<\/em><\/p>\n<p><strong>L\u00f6tsch, J., Dimova, V., Hermens, H., Zimmermann, M., Geisslinger, G., Oertel, BG., Ultsch, A.:<\/strong> <a href=\"http:\/\/www.ncbi.nlm.nih.gov\/pubmed\/25687540\" target=\"_blank\" rel=\"noopener\">Pattern of neuropathic pain induced by topical capsaicin application in healthy subjects<\/a>, <em>Pain, Vol. 3, pp. 405-414, 2015.<\/em><\/p>\n<p><strong>L\u00f6tsch, J., Ultsch, A.:<\/strong> <a title=\"New Methods for the Classification\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/newmethods.pdf\">New Methods for the Classification of inequally distributed Data<\/a>: <em>ABC-plots and computed ABC-analysis, European Conference on Data Analysis, pp. 121-122, Colchester, 2015.<\/em><\/p>\n<p><strong>L\u00f6tsch, J., Ultsch, A.:<\/strong> <a href=\"http:\/\/www.ncbi.nlm.nih.gov\/pubmed\/26679724\" target=\"_blank\" rel=\"noopener\">A computational functional genomics based self-limiting self-concentration mechanism of cell specialization as a biological role of jumping genes<\/a>,&nbsp; <em>Integrative Biology, Vol. 8(1), pp. 91-103, 2015.<\/em><\/p>\n<p><strong>L\u00f6tsch, J., Niederberger, E., Ultsch, A.:<\/strong> Computational functional genomics based analysis of pain-relevant micro-RNAs, <em>Hum Genet, Vol. 134, pp. 1221-1238, 2015.<\/em><\/p>\n<p><strong>L\u00f6tsch, J., Daiker, H., H\u00e4hner, A., Ultsch, A., Hummel, T.:<\/strong> <a title=\"15loetschdrugtargetcrosssectional\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/15loetschdrugtargetcrosssectional.pdf\">Drug-target based cross-sectional analysis of olfactory drug effects<\/a>, <em>Eur J Clin Pharmacol 2015.<\/em><\/p>\n<p><strong>L\u00f6tsch, J., Dimova, V., Lieb, I., Zimmermann, M., Oertel, BG., Ultsch, A.:<\/strong> <a href=\"http:\/\/journals.plos.org\/plosone\/article?id=10.1371\/journal.pone.0125822\" target=\"_blank\" rel=\"noopener\"> Multimodal distribution of human cold pain thresholds<\/a>, <em>PLoS One 2015.<\/em><\/p>\n<p><strong>L\u00f6tsch, J., Dimova, V., Ultsch, A., Lieb, I., Zimmermann, M., Geisslinger, G., Oertel, BG.:<\/strong> <a href=\"http:\/\/onlinelibrary.wiley.com\/doi\/10.1002\/ejp.803\/epdf\" target=\"_blank\" rel=\"noopener\">A small yet comprehensive subset of human experimental pain models emerging from correlation analysis with a clinical quantitative sensory testing protocol in healthy subjects<\/a>, <em>Pain, 156, pp. 405-414, 2015.<\/em><\/p>\n<p><strong>L\u00f6tsch, J., Knothe, C., Lippmann, C., Ultsch, A., Hummel, T., Walter, C.:<\/strong> <a title=\"15loetscholfactorydrugeffects.pdf\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/15loetscholfactorydrugeffects.pdf\">Olfactory drug effects approached from human-derived data<\/a>, <em>Drug Discov Today 2015.<\/em><\/p>\n<p><strong>L\u00f6tsch, J., Reither, N., Bogdanov, V., H\u00e4hner, A., Ultsch, A., Hill, K., Hummel, T.:<\/strong> A brain-lesion pattern based algorithm for the diagnosis of post-traumatic olfactory loss, <em>Rhinology 53, pp.365-370, 2015.<\/em><\/p>\n<p><strong>2014<\/strong><\/p>\n<p><strong>Ultsch, A.:<\/strong> Datenbionik: <a title=\"Datenbionik: Selbstorganisierende Systeme zur Entdeckung ungew\u00f6hnlicher Strukturen in Unternehmensdaten\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/daten\">Selbstorganisierende Systeme zur Entdeckung ungew\u00f6hnlicher Strukturen in Unternehmensdaten<\/a>, <em>in: Herde, G.(ed): Transparenz durch digitale Datenanalyse, Erich Schmidt Verlag, pp. 37-52, 2014 (ISBN 978 3 503 15675 7).<\/em><\/p>\n<p><strong>Ultsch, A.,<\/strong> <strong>L\u00f6tsch, J.<\/strong>: Functional abstraction as a method to discover knowledge in gene ontologies. <em>in: Sch\u00f6nbach. C., PLoS One, 9(2), pp. 90-191, 2014.<\/em><\/p>\n<p><strong>Ultsch, A., L\u00f6tsch, J<\/strong>.: What do all the (human) micro-RNAs do?, <em>A functional genomics perspective, DOI: 10.1186\/1471-2164-15-976, BMC Genomics, 2014.<\/em><\/p>\n<p><strong>Ultsch, A., Pallasch, C., Herda, S., L\u00f6tsch, J.:<\/strong> What do all those miRNAs do?, <em>in: Kestler, HA., Schmid, M., Lausser, L., Kraus, JM. (eds): Statistical Computing 2014, Ulmer Informatik-Berichte, pp. 16, 2014 (ISSN 0939-5091).<\/em><\/p>\n<p><strong>L\u00f6tsch, J., Ultsch, A.:<\/strong> <a title=\"Exploiting the Structures of the U-Matrix\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/umatrix.pdf\">Exploiting the structures of the U-matrix<\/a>, <em>in Villmann, T., Schleif, F.-M., Kaden, M. &amp; Lange, M. (eds.), Proc. Advances in Self-Organizing Maps and Learning Vector Quantization, pp. 249-257, Springer International Publishing, Mittweida, Germany, 2014.<\/em> <a id=\"_ENREF_10\" name=\"_ENREF_10\"><\/a><br><strong><br>L\u00f6tsch, J., Oertel, B. G., Ultsch, A.:<\/strong> <a href=\"http:\/\/www.ncbi.nlm.nih.gov\/pubmed\/25020003\" target=\"_blank\" rel=\"noopener\">Human models of pain for the prediction of clinical analgesia<\/a>, <em>Pain, Vol. 155(10), pp. 2014-21, 2014, (ISSN 0304-3959).<\/em><a id=\"_ENREF_10\" name=\"_ENREF_10\"><\/a><\/p>\n<p><strong>Schmitz, K., deBruin, N., Bishay, P., M\u00e4nnich, J., H\u00e4ussler, A., Ferreir\u00f3s, N., L\u00f6tsch, J., Ultsch, A., Parnham, M.J., Geisslinger, G., Tegeder, I.:<\/strong> <a href=\"http:\/\/www.readcube.com\/articles\/10.15252\/emmm.201404168\" target=\"_blank\" rel=\"noopener\">R-flurbiprofen attenuates experimental autoimmune encephalomyelitis in mice<\/a>, <em>EMBO Mol Med, 2014.<\/em><\/p>\n<p><strong>Walter, C., Oertel, B. G., Ludyga, D., Ultsch, A., Hummel, T., L\u00f6tsch, J.:<\/strong> <a href=\"http:\/\/www.ncbi.nlm.nih.gov\/pubmed\/24802974\" target=\"_blank\" rel=\"noopener\">Effects of 20 mg oral Delta-9-tetrahydrocannabinol on human olfaction<\/a>, <em>British Journal of Clinical Pharmacology, Vol, 78, pp. 961-969, 2014.<\/em><\/p>\n<p><strong>&nbsp;<\/strong><\/p>\n<p><strong>2013<\/strong><\/p>\n<p><strong>Ultsch, A.:<\/strong> <a title=\"swarm data mining for the fine structure of thermals\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/swarm.pdf\">Swarm Data Mining for the Fine Structure of Thermals<\/a>, <em>in: Technical Soaring, Vol. 36, Nr. 4, pp. 37 &#8211; 44, 2013.<\/em><\/p>\n<p><strong>Lausen, B., Van den Poel, D., Ultsch, A.(eds):<\/strong> Algorithms from and for Nature and Life &#8211; Classification and Data Analysis, Studies in Classification, <em>Data Analysis and Knowledge Organization, Springer, New York, 2013 (ISBN 978 3 319 00034 3).<\/em><\/p>\n<p><strong>L\u00f6tsch, J., Doehring, A., Mogil, J.S., Arndt, T., Geisslinger, G., Ultsch, A.:<\/strong> <a href=\"http:\/\/www.sciencedirect.com\/science\/article\/pii\/S0163725813000831\" target=\"_blank\" rel=\"noopener\"> Functional genomics of pain in analgesic drug development and therapy<\/a>, <em>in: Pharmacology &amp; Therapeutics, Volume 139, Issue 1, pp. 60\u201370, 2013.<\/em><\/p>\n<p><strong>L\u00f6tsch, J., Schaeffeler, E., Mittelbronn, M., Winter, S., Gudziol, V., Schwarzacher, S.W., Hummel, T., Doehring, A., Schwab, M., Ultsch, A.<\/strong>: Functional genomics suggest neurogenesis in the adult human olfactory bulb, Brain Structure &amp; Function, Springer, Berlin, 2013.<\/p>\n<p><a id=\"_ENREF_3\" name=\"_ENREF_3\"><\/a><\/p>\n<p><strong>L\u00f6tsch, J., Ultsch, A.:<\/strong> <a title=\"Journal of Biomedical Informatics\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/journal.pdf\">A machine-learned knowledge discovery method for associating complex phenotypes with complex genotypes<\/a>, <em>Application to pain, Journal of biomedical informatics, Vol. 46(5), pp. 921-928. 2013.<\/em><\/p>\n<p><strong>L\u00f6tsch, J., Skarke, C., Darimont, J., Zimmermann, M., Br\u00e4utigam, L., Geisslinger, G., Ultsch, A., Oertel, BG<\/strong>.: Non-invasive combined surrogates of remifentanil blood concentrations with relevance to analgesia, <em>accepted for Naunyn-Schmiedeberg&#8217;s, Archives of Pharmacology, Volume 386, Issue 10, pp. 865-873, 2013.<br><\/em><strong><em><br><\/em><br>2012<\/strong><\/p>\n<p><strong>Behnisch, M., Ultsch, A.:<\/strong> Gibt es gemeinsame Muster in der Populationsentwicklung von Schweizer Gemeinden?&nbsp;<\/p>\n<p>in: Thinh, N. X., Behnisch, M., Margraf, O. (eds): Beitr\u00e4ge zur Theorie und quantitativen Methodik in der Geographie, in: Rhombos-Verlag, Berlin, pp. 37-54, 2012 (ISBN 978-3-941216-67-9).<\/p>\n<p><strong>L\u00f6tsch, J., Ultsch, A.:<\/strong> Functional abstraction for large Gene Ontology taxonomies, in: Kestler, HA., Binder, H., Schmid, M., Kraus, JM. (eds): Statistical Computing 2012, Ulmer Informatik-Berichte, pp. 6, 2012 (ISSN 0939-5091).<\/p>\n<p><strong>Schlecker, C.,<\/strong> <strong>Ultsch, A., Geisslinger, G., L\u00f6tsch, J<\/strong>.: <a href=\"http:\/\/www.ncbi.nlm.nih.gov\/pubmed\/22409946\" target=\"_blank\" rel=\"noopener\">The pharmacogenetic background of hepatitis C treatment,<\/a> in: Mutation Research, Volume 751, pp. 36-48, 2012.<\/p>\n<p>2011<\/p>\n<p><strong>Moerchen, F., Thies, M., Ultsch, A.:<\/strong> Efficient mining of all margin-closed itemsets with applications in temporal knowledge discovery and classification by compression, Knowl. Inf. Syst, 29(1), pp. 55-80, 2011.<\/p>\n<p><strong>Stegemann, B., Klebe, G.<\/strong>: <a title=\"11stegemannklebecofactorbinding\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/11stegemannklebecofactorbinding.pdf\">Cofactor-binding sites in proteins of deviating sequence: Comperative analysis and clustering in torsion angle, cavity and fold space<\/a>, in: Proteins, Volume 80, pp. 626-648, 2011.<\/p>\n<p><strong>L\u00f6tsch, J., Hofmann, W.P, Schlecker, C., Zeuzem, S., Geisslinger, G.,<\/strong> <strong>Ultsch, A., Doehring, A<\/strong><strong>.:<\/strong>&nbsp;<a href=\"http:\/\/www.ncbi.nlm.nih.gov\/pubmed\/22118055\" target=\"_blank\" rel=\"noopener\">Single and combined IL28B, ITPA and SLC28A3 host genetic markers modulating response to anti-hepatitis C therapy:<\/a> in: pharmazentrum frankfurt\/ZAFES, Institute for Clinical Pharmacology, Goethe University, Volume 12, Nr. 12, pp. 1729-1740, 2011.<\/p>\n<p><strong>L\u00f6tsch, J., Ultsch, A.:<\/strong> Association of complex human pain phenotypes with complex pain genotypes using a self-organizing maps approach. Joint Conference&nbsp; of the German Classification Society (GfKl) and the German Association for Pattern Recognition (DAGM): Algorithms from &amp; for Nature and Life. Frankfurt am Main, Germany. pp. 120, 2011.<\/p>\n<h3>2010<\/h3>\n<p><strong>Ultsch, A.:&nbsp;<\/strong> Is log ratio a good Value for measuring Return in Stock Investments?, in: <em>Fink, A. et al (Eds.)<\/em> Advances in Data Analysis. Data Handling and Business Intelligence, Springer Studies in Classification, Data Analysis and Knowledge Organization, Springer, Heidelberg, pp. 505-511, 2010.<\/p>\n<p><strong>Ultsch, A., Herrmann,L<\/strong>.: Self Organized Swarms for cluster preserving Projections of high-dimensional Data, Workshop \u00fcber Selbstorganisierende, adaptive kontextsensitive verteilte Systeme<em>,Electronic Communications of the EASST Volume 27, 2010.<br><\/em><\/p>\n<p><strong>Behnisch, M., Ultsch, A.<\/strong>: Urban Data Mining &#8211; Eine Methodik zur raumbezogenen Wissensextraktion, in: <em>GIS Science Zeitschrift f\u00fcr Geoinformatik, pp. 135-147, 2010.<\/em><\/p>\n<p><strong>Behnisch, M., Ultsch, A.<\/strong>: <a title=\"Behnisch-Ultsch10Pop.Patt.pdf\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/behnischultsch10poppatt.pdf\">Clustering Temporal Population Patterns in Switzerland 1850-2000<\/a>&nbsp; <em>in: Gaul, W. et al (Eds.)<\/em> Advances in <em>Data Analysis, Data Handling and Business Intelligence (Proc. of the 34nd Annual Conference of the Gesellschaft f\u00fcr Klassifikation.e.V., Karlsruhe),&nbsp;Springer<\/em><em>, Heidelberg, pp. 163-173, 2010<\/em>.<\/p>\n<p><strong>Heise, R., Ultsch, A.<\/strong>: Data Mining to Distinguish Wave from Thermal Climbs in Flight Data, in: Gaul, W. et al (Eds.) <em>Advances in Data Analysis, Data Handling and Business Intelligence (Proc. of the 34nd Annual Conference of the Gesellschaft f\u00fcr Klassifikation e.V., Karlsruhe), Springer<\/em><em>, 2010<\/em>.<\/p>\n<p><strong>2009<\/strong><\/p>\n<p>&nbsp;<strong><br><\/strong><\/p>\n<p><strong>Ultsch, A.<\/strong>: The U-Matrix as Visualization for Projections of high-dimensional data, <em>in: Locarek-Junge, H. et al. (Eds.) Classification as a Tool for Research, Proc. 11th IFCS Biennial Conference, 2009.<\/em><\/p>\n<p><strong>Ultsch, A., Locarek-Junge, H.<\/strong>: Knowledge Discovery in Stock Market Data, <em>in: Locarek-Junge, H. et al. (Eds.) Classification as a Tool for Research, Proc. 11th IFCS Biennial Conference, 2009.<\/em><\/p>\n<p><strong>Behnisch, M., Ultsch, A.<\/strong>: Estimating the number of buildings in Germany, <em>in: Andreas Fink, Berthold Lausen, Wilfried Seidel, Alfred Ultsch (eds.): Advances in Data Analysis, Data Handling and Business Intelligence (Proc. of the 32nd Annual Conference of the Gesellschaft f\u00fcr Klassifikation e.V., Hamburg), pp. 311-318, Springer, Berlin, 2009. <a href=\"http:\/\/www.springerlink.com\/content\/n307l744080488q6\/\" target=\"_blank\" rel=\"noopener\">http:\/\/www.springerlink.com\/content\/n307l744080488q6\/.<\/a><\/em><\/p>\n<p><strong>Behnisch, M., Ultsch,A.<\/strong>: Are there cluster of communities with the same dynamic behaviour?<em>, in: Hermann Locarek-Junge, Claus Weihs (eds.): Classification as a Tool for Research. (Proc. of the 11th Bi-Annual Conference of the International Federation of Classification Societies, IFCS, Dresden University of Technology, pp. 13-18, 2009.<\/em><\/p>\n<p><strong>Behnisch, M., Ultsch, A<\/strong>.: Urban data mining: spatiotemporal exploration of multidimensional data, <em>in: BuildingResearch &amp; Information, Vol. 37, Nr. 5-6, 2009.<\/em><em><a href=\"http:\/\/www.informaworld.com\/smpp\/content~content=a914935599~db=all~jumptype=rss\" target=\"_blank\" rel=\"noopener\"> http:\/\/www.informaworld.com\/smpp\/content~content=a914935599~db=all~jumptype=rss.<\/a><\/em><\/p>\n<p><strong>Henker, U., Petersohn, U., Ultsch,A.<\/strong>: <a href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/precise.pdf\">The Precise and Efficient Identification of Medical Order Forms Using Shape Trees<\/a>, <em>in: Andreas Fink, Berthold Lausen, Wilfried Seidel, Alfred Ultsch (eds.): Advances in Data Analysis, Data Handling and Business Intelligence, Springer, Studies in Classification, Data Analysis and Knowledge Organization, Springer, pp. 651-661, 2009.<a href=\"http:\/\/www.springerlink.com\/content\/v727133323686123\/\" target=\"_blank\" rel=\"noopener\">http:\/\/www.springerlink.com\/content\/v727133323686123\/.<\/a><\/em><\/p>\n<p><strong>Herrmann, L., Ultsch, A.:<\/strong> <a title=\"Clustering with Swarm Algorithms compared to Emergent SOM\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/hermannultschant09wsom.pdf\">Clustering with Swarm Algorithms Compared to Emergent SOM, In<\/a> <a title=\"Clustering with Swarm Algorithms compared to Emergent SOM\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/hermannultschant09wsom.pdf\">Advances in Self-Organizing Maps<\/a>, 7th International Workshop, WSOM, St. Augustine, Florida, 2009.<\/p>\n<p><strong>Herrmann, L., Ultsch, A.:<\/strong> The Architecture of Ant-Based Clustering to Improve Topographic Mapping. <a href=\"http:\/\/www.informatik.uni-trier.de\/%7Eley\/db\/conf\/antsw\/ants2008.html#HerrmannU08\" target=\"_blank\" rel=\"noopener\"> ANTS Conference 2008<\/a>, <em>pp. 379-386, 2009.<\/em><\/p>\n<p><strong>Meyer, F., Ultsch, U.:<\/strong> <a title=\"Finding Music Fads by\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/finding.pdf\">Finding Music Fads by Clustering Online Radio Data with Emergent Self Organinzing Maps,<\/a> <em>in: Andreas Fink, Berthold Lausen, Wilfried Seidel, Alfred Ultsch (eds.): Advances in Data Analysis, Data Handling and Business Intelligence (Proc. of the 32nd Annual Conference of the Gesellschaft f\u00fcr Klassifikation e.V., Hamburg) pp. 419-427, 2009<br><\/em><\/p>\n<p><strong>Ohrndorf, P.<\/strong>: Die Identifikation von Leewellen mit Hilfe von Flugwegaufzeichnungen am Beispiel ausgew\u00e4hlter Segelfl\u00fcge im Alpenraum, <em>Thesis, Departement of Geography, University Marburg, 2009.<\/em><\/p>\n<p><a href=\"http:\/\/www.mathematik.uni-marburg.de\/~databionics\/papers\/09OhrndorfExamensarbeit.pdf\" target=\"_blank\" rel=\"noopener\"><br><\/a><\/p>\n<p><strong>2008<\/strong><\/p>\n<p><strong>Ultsch, A.:<\/strong> <a title=\"08gfklultschlogratioreturn\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/08gfklultschlogratioreturn.pdf\">Is Log Ratio a Good Value for Measuring Return in Stock Investments?<\/a> GfKl 2008, pp, 505-511, 2008.<\/p>\n<p><strong>Ultsch, A., Pallasch, C., Bergmann, E., Christiansen, E.:<\/strong> <a title=\"08ultschpulbioinformatics\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/08ultschpulbioinformatics.pdf\">A Comparison of Algorithms to find Differentially Expressed Genes in Microarray Data<\/a>, <em>in: Proceedings 32nd Annual Conference of the German Classification Society GfKl 2008, Hamburg, Germany, 2008 http:\/\/www.springerlink.com\/content\/k605853l16464748.<\/em><\/p>\n<p><strong>Behnisch, M., Ultsch, A.:<\/strong> Estimating the Number of Buildings in Germany, <em>in: C. Preisach et al. (Eds)., Data Analysis, Machine Learning and Applications, Springer, pp, 311-318, 2008.<\/em><\/p>\n<p><strong>Fink, A., Lausen, B., Seidel, W., Ultsch, A.:<\/strong> (eds.) \/:\/Advances in Data Analysis, Data Handling and Business Intelligence, Studies in Classification, Data Analysis, and Knowledge Organization, Springer Berlin, 2008, http:\/\/ww.springer.com\/series\/1564<\/p>\n<p><strong>Henker, U., Petersohn, U., Ultsch, A.:<\/strong> The precise and efficient identification of medical order forms using Shape Trees, to appear in: <em>Proceedings 32nd Annual Conference of the German Classification Society GfKl&nbsp; 2008,<\/em> Hamburg Germany, <em>2008<\/em>.<\/p>\n<p><a id=\"appelrath86kofis\" name=\"appelrath86kofis\"><\/a><strong>Herrmann, L., Ultsch, A.<\/strong>:<a title=\"08hermannantbasek\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/08hermannantbasek.pdf\">Explaining Ant-Based Clustering on the basis of Self-Organizing Maps<\/a>,&nbsp;Verleysen M. (Eds), In <em>Proceedings of the European Symposium on Artificial Neural Networks (ESANN 2008)<\/em>, Bruges, pp, 215 &#8211; 220, Belgium, 2008, http:\/\/www.dice.ucl.ac.be\/Proceedings\/esann\/esannpdf\/es2008-51.pdf.<\/p>\n<p><strong>Herrmann, L., Ultsch, A.:<\/strong> <a title=\"08herrmannantbased\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/08herrmannantbased.pdf\">The Architecture of Ant-Based Clustering to Improve Topographic Mapping<\/a>,&nbsp;Dorigo, M., Birattari, M., Blum, C., Clerc, M., St\u00fctzle, T., Winfield, A. (Eds.), in: <em>Ant Colony Optimization and Swarm Intelligence&nbsp;&#8211; Proceedings&nbsp;6th Int. Conf.&nbsp;(ANTS 2008)<\/em>, Brussels, Springer-Verlag Berlin Heidelberg, pp, 379-386, Belgium, 2008.<\/p>\n<p><strong>Herrmann, L., Ultsch, A.:<\/strong> Strengths and Weaknesses of Ant Colony Clustering, <em>in: Proceedings 32nd Annual Conference of the German Classification Society GfKl 2008, Hamburg, Germany, 2008<\/em> <a href=\"http:\/\/www.springerlink.com\/content\/q3440032m718r645\" target=\"_blank\" rel=\"noopener\">http:\/\/www.springerlink.com\/content\/q3440032m718r645.<\/a><\/p>\n<p><strong>Lehwark, P., Risi, S., Ultsch, U.<\/strong>: Visualization and Clustering of Tagged Music Data, in: <em><a href=\"http:\/\/www.springerlink.com\/content\/u2842m\/?p=ddb2fcd233b7424d946fe6d28defd09a&amp;pi=0\" target=\"_blank\" rel=\"noopener\"> Data Analysis, Machine Learning and Applications<\/a>, <a href=\"http:\/\/www.springerlink.com\/content\/l82324\/?p=ddb2fcd233b7424d946fe6d28defd09a&amp;pi=0\" target=\"_blank\" rel=\"noopener\"> Studies in Classification, Data Analysis, and Knowledge Organization, Springer, pp, 673-680, 2008.<\/a><\/em><\/p>\n<p><strong>Meyer, F., Ultsch, A.:<\/strong> Finding Music Fads by clustering Online Radio Data whith Emergent Self Organizing Maps, <em>to appear in: Proceedings 32nd Annual Conference of the German Classification Society, GfKl 2008, Hamburg, Germany, 2008.<\/em><\/p>\n<p><strong>Pallasch, C. P., Schulz, A., Kutsch, N., Schwamb, J., Hagist, S., Kashkar, H., Ultsch, A., Wickenhauser, C.,&nbsp; Hallek, M., Wendtner, C.-M.:<\/strong> <em>Overexpression of TOSO in CLL is triggered by B-cell receptor signaling and associated with progressive disease,<\/em> Blood. 2008, 18708628 (P,S,E,B,D).<\/p>\n<p><a id=\"appelrath86kofis\" name=\"appelrath86kofis\"><\/a><\/p>\n<h3>2007<\/h3>\n<p><strong>Ultsch, A.<\/strong>: <a title=\"Ultsch07EmergenceWSOM\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2007\/WSOM07Emergence\" target=\"_self\" rel=\"noopener\">Emergence in Self-Organizing Feature Maps<\/a>, <em>in Ritter, H., Haschke, R.: Proceedings 6th Int. Workshop on Self-Organizing Maps, WSOM &#8217;07, Bielefeld, Germany, 2007.<\/em><\/p>\n<p><strong>Ultsch, A.<\/strong>: <a title=\"07PUL\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2007\/07PUL\" target=\"_self\" rel=\"noopener\">Using Information Retrieval Methods for a Comparison of Algorithms to find differentially expressed Genes in Microarray Data<\/a>, <em>Technischer Report, Fachbereich Mathematik und Informatik, Uni Marburg, 2007.<\/em><\/p>\n<p><strong>Ultsch, A.<\/strong>: U<sup>*<\/sup>C: Distance and Density Clustering based on Grid Projections. <a href=\"http:\/\/www.informatik.uni-trier.de\/%7Eley\/db\/conf\/lwa\/lwa2007.html#Ultsch07\" target=\"_blank\" rel=\"noopener\"> LWA 2007<\/a>, <em>pp, 81-86, 2007.<\/em><\/p>\n<p><strong>Behnisch, M., Ultsch, A.<\/strong>: <em>Urban Data Mining using Emergent SOM. in: Preisach, C.; Burkhardt, H.; Schmidt-Thieme, L; Decker, R. (eds.): Data Analysis, Machine Learning and Applications, (Proc. of the 31st Annual Conference of the Gesellschaft f\u00fcr Klassifikation e.V., Albert-Ludwigs-Universit\u00e4t Freiburg, March 7\u20139, 2007), pp, 311-318, Springer Verlag, Berlin, 2007.<\/em><a href=\"http:\/\/www.springerlink.com\/content\/g3v253xu52g52k54\/\" target=\"_blank\" rel=\"noopener\">http:\/\/www.springerlink.com\/content\/g3v253xu52g52k54\/.<\/a><\/p>\n<p><strong>Herrmann, L., Ultsch, A.<\/strong>: <a title=\"HerrmannUltsch07ssALife\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2007\/GfKL07ssALife\" target=\"_self\" rel=\"noopener\">An Artificial Life Approach for Semi-Supervised Learning<\/a>, <em>in: Proceedings 31st Annual Conference of the German Classification Society, GfKl 2007, Freiburg, Germany, 2007.<\/em><\/p>\n<p><strong>Herrmann, L., Ultsch, A.<\/strong>: <a title=\"HerrmannWSOM07semisupervisedLabelProp\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2007\/WSOMssLP\" target=\"_self\" rel=\"noopener\">Label Propagation for Semi-Supervised Learning in Self-Organizing Maps<\/a>, in: <em>Proceedings&nbsp;6th Int. Workshop on Self-Organizing Maps, WSOM &#8217;07<\/em>, Bielefeld, Germany, 2007.<\/p>\n<p><strong>Kupas, K., Ultsch, A., Klebe, G.:<\/strong> <em>Large scale analysis of protein-binding cavities using self-organizing maps and wavelet-based surface patches to describe functional properties, selectivity discrimination, and putative cross-reactivity.<\/em> Proteins. 2007 N: 18041748 (P,S,E,B,D).<\/p>\n<p><strong>Lehwark, P., Risi, S., Ultsch, A.<\/strong>: <a title=\"LehwarkGfKltaggedmusic\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2007\/LehwarkGfKltaggedmusic\" target=\"_self\" rel=\"noopener\">Visualization and clustering of tagged music data<\/a>. in: <em>Proceedings 31st Annual Conference of the German Classification Society, GfKl 2007,<\/em> Freiburg, Germany, 2007.<\/p>\n<p><strong>M\u00f6rchen, F., Ultsch, A.<\/strong>:&nbsp;<a href=\"http:\/\/www.springerlink.com\/content\/5504462251662125\/?p=ca3ae5ec82f449d1b9ab24009a5e57ef&amp;pi=1\" target=\"_blank\" rel=\"noopener\">Efficient mining of understandable patterns from multivariate interval time series<\/a>,&nbsp;Data Mining and Knowledge Discovery, Springer Netherlands, 2007 ISSN 1384-5810 (Print), pp, 1573-756X (Online).<\/p>\n<p><strong>Pallasch, C. P., Schwamb, J., K\u00f6nigs, S., Schulz, A., Debey, S., Kofler, D., Schultze, J. L., Hallek, M., Ultsch, A., Wendtner, C. M.:<\/strong> <em>Targeting lipid metabolism by the lipoprotein lipase inhibitor orlistat results, in: apoptosis of B-cell chronic lymphocytic leukemia cells.<\/em>&nbsp; Leukemia. 2007, 18079738 (P,S,E,B,D).<\/p>\n<p><strong>Risi, S., M\u00f6rchen, F., Ultsch, A., Lewark, P.<\/strong>: <a title=\"Risietal07MusicMining\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2007\/WSOM07musicMining\" target=\"_self\" rel=\"noopener\">Visual mining in music collections with Emergent SOM<\/a>, in: <em>Proceedings Workshop on Self-Organizing Maps (WSOM &#8217;07)<\/em>, Bielefeld, Germany, 2007, ISBN: 978-3-00-022473-7.<\/p>\n<h3>2006<\/h3>\n<p><strong>Ultsch, A.<\/strong>: <a title=\"ultsch06usternc\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2006\/ultsch06usternc\" target=\"_self\" rel=\"noopener\">Analysis and practical results of U*C clustering<\/a>, in: <em>Proceedings 30th Annual Conference of the German Classification Society, GfKl 2006,<\/em> Berlin, Germany, 2006.<\/p>\n<p><strong>Ultsch, A., Herrmann, L.<\/strong>: <a title=\"AutomaticClustering\" href=\"https:\/\/www.uni-marburg.de\/fb12\/forschung\/berichte\/berichteinformtk\/autom_clust\" target=\"_self\" rel=\"noopener\">Automatic Clustering with U*C<\/a>, Technical Report, Dept. of Mathematics and Computer Science, Philipps-University of Marburg, 2006.<\/p>\n<p><strong>Ultsch, A.,&nbsp;M\u00f6rchen, F.<\/strong>:&nbsp;<a title=\"ultsch06umaps\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2006\/ultsch06umaps\" target=\"_self\" rel=\"noopener\">U-Maps: topographic visualization techniques for projections of high dimensional data<\/a>, in: <em>Proceedings 30th Annual Conference of the German Classification Society GfKl 2006,<\/em> Berlin, Germany, 2006.<\/p>\n<p><strong>M\u00f6rchen, F., Ultsch, A., Hoos, O.<\/strong>: <a title=\"moerchen06extracting\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2006\/moerchen06extracting\" target=\"_self\" rel=\"noopener\">Extracting interpretable muscle activation patterns with Time Series Knowledge Mining<\/a>, <em>International Journal of Knowledge-Based &amp; Intelligent Engineering Systems<\/em> 9(3), pp, 197-208, 2006.&nbsp;<\/p>\n<p><strong>M\u00f6rchen, F., Ultsch, A., Thies, M., L\u00f6hken, I.<\/strong>: <a title=\"moerchen06modelling\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2006\/moerchen06modelling\" target=\"_self\" rel=\"noopener\">Modelling timbre distance with temporal statistics from polyphonic music<\/a>, <em>IEEE Transactions on Speech and Audio Processing<\/em> 14(1)IEEE, pp, 81-90, 2006.<\/p>\n<p><strong>M\u00f6rchen, F., Mierswa, I.,Ultsch, A.<\/strong>: Understandable models Of music collections based on exhaustive feature generation with temporal statistics. <a href=\"http:\/\/www.informatik.uni-trier.de\/%7Eley\/db\/conf\/kdd\/kdd2006.html#MorchenMU06\" target=\"_blank\" rel=\"noopener\"> KDD 2006<\/a>, pp, 882-891, 2006.<\/p>\n<p><strong>N\u00f6cker, M., M\u00f6rchen, F., Ultsch, A.<\/strong>: <a title=\"noecker06fast\" href=\"http:\/\/www.uni-marburg.de\/fb12\/datenbionik\/pdf\/pubs\/2006\/noecker06fast\" target=\"_self\" rel=\"noopener\">Fast and reliable ESOM learning<\/a>, <em>Proceedings 14th European Symposium on Artificial Neural Networks<\/em>, Bruges, Belgium, pp 131-136, 2006.<\/p>\n<p><strong>Thinh, N. X., Behnisch, M., Ultsch, A.<\/strong>: <em>Examination of several results of different cluster analysis with a separate view to balancing the economic and ecological performance potential of towns and cities, in: BOCK, H.H., GAUL, W., VICHI, M. (eds.): Studies in Classification, Data Analysis, and Knowledge Organization. Proceedings, 30. Jahrestagung der Gesellschaft f\u00fcr Klassifikation, pp, 289-296. Springer, Berlin, 2006.<\/em><\/p>\n<p><strong>2005<\/strong><\/p>\n<p><strong>Ultsch, A.<\/strong>: <a title=\"2005ultsch_pde\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/2005ultsch_pde.pdf\">Pareto density estimation: A density estimation for knowledge discovery<\/a>, in&nbsp; Baier, D.; Werrnecke, K. D., (Eds), <em>Innovations in classification, data science, and information systems<\/em>, Proc Gfkl 2003, pp 91-100, Springer, Berlin, 2005.<\/p>\n<p><strong>Ultsch, A.<\/strong>: <a title=\"ultsch05clustering\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2005\/ultsch05clustering\" target=\"_self\" rel=\"noopener\">Clustering with SOM: U*C<\/a>, In <em>Proceedings Workshop on Self-Organizing Maps (WSOM 2005)<\/em>, pp, 75-82, Paris, France, 2005.<\/p>\n<p><a id=\"ultsch04pdegfkl\" name=\"ultsch04pdegfkl\"><\/a><strong>Ultsch, A.<\/strong>: <a title=\"ultsch04pdegfkl\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2005\/ultsch04pdegfkl\" target=\"_self\" rel=\"noopener\">Density Estimation and Visualization for Data containing Clusters of unknown Structure.<\/a>, Weihs, C., Gaul, W. (Eds), In <em>Classification; The Ubiquitous Challenge, Proceedings 28th Annual Conference of the German Classification Society, GfKl 2004<\/em>, Dortmund, Germany, Springer, Heidelberg, pp, 232-239, 2005.<\/p>\n<p><a id=\"ultsch04logratiogfkl\" name=\"ultsch04logratiogfkl\"><\/a><strong>Ultsch, A.<\/strong>: <a title=\"ultsch04logratiogfkl\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2005\/ultsch04logratiogfkl\" target=\"_self\" rel=\"noopener\">Improving the identification of differentially expressed genes in cDNA microarray experiments<\/a>, Weihs, C., Gaul, W. (Eds), In <em>Classification; The Ubiquitous Challenge, Proceedings 28th Annual Conference of the German Classification Society, GfKl 2004<\/em>, Dortmund, Germany, Springer, Heidelberg, pp, 378-385, 2005.<\/p>\n<p><a id=\"ultsch05ustarc\" name=\"ultsch05ustarc\"><\/a><strong>Ultsch, A.<\/strong>: <a title=\"ultsch05ustarc\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2005\/ultsch05ustarc\" target=\"_self\" rel=\"noopener\">U*C: Self-organizied Clustering with Emergent Feature Map<\/a>, In <em>Proceedings Lernen, Wissensentdeckung und Adaptivit\u00e4t (LWA\/FGML 2005)<\/em>, Saarbr\u00fccken, Germany, pp. 240-244, 2005.<\/p>\n<p><a id=\"ultsch05architecture\" name=\"ultsch05architecture\"><\/a><strong>Ultsch, A., Herrmann, L.<\/strong>: <a title=\"ultsch05architecture\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2005\/ultsch05architecture\" target=\"_self\" rel=\"noopener\">The architecture of emergent self-organizing maps to reduce projection errors<\/a>, Verleysen M. (Eds), In <em>Proceedings of the European Symposium on Artificial Neural Networks (ESANN 2005)<\/em>, pp, 1-6, 2005.<\/p>\n<p><a id=\"ultsch05ustarf\" name=\"ultsch05ustarf\"><\/a><\/p>\n<p><a id=\"ultsch05esom\" name=\"ultsch05esom\"><\/a><strong>Ultsch, A., M\u00f6rchen, F.<\/strong>: <a title=\"ultsch05esom\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2005\/ultsch05esom\" target=\"_self\" rel=\"noopener\">ESOM-Maps: tools for clustering, visualization, and classification with Emergent SOM<\/a>, Technical Report No. 46, Dept. of Mathematics and Computer Science, University of Marburg, Germany, 2005.<\/p>\n<p><a id=\"ultsch05musicminer\" name=\"ultsch05musicminer\"><\/a><strong>Ultsch, A., M\u00f6rchen, F., Efthymiou, N., K\u00fcmmerer, M., L\u00f6hken, I., N\u00f6cker, M., Stamm, C., Thies, M.<\/strong>: <a title=\"ultsch05musicminer\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2005\/ultsch05musicminer\" target=\"_self\" rel=\"noopener\">MusicMiner &#8211; Ein datenbionisches System zur Organisation von Musiksammlungen<\/a>, Kooperationspartner in Forschung und Innovation Wiesbaden, 2005.<\/p>\n<p><strong>Ultsch, A., Moutarde, F.<\/strong>: <a title=\"ultsch05ustarf\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2005\/ultsch05ustarf\" target=\"_self\" rel=\"noopener\">U*F Clustering: a new performant Cluster-mining method based on segmentation of Self-Organizing Maps<\/a>, in: <em>Proceedings Workshop on Self-Organizing Maps (WSOM 2005)<\/em>, Paris, France, pp, 25-32, 2005.<\/p>\n<p><a id=\"koch05involvement\" name=\"koch05involvement\"><\/a><strong>Koch, O., Kupas, K., Ultsch, A., Klebe, G.<\/strong>: <em>Involvement of turns in ligand binding: Using Secbase to analyse secondary structure elements<\/em>, Poster German Conference on Bioinformatics (GCB 2005), 2005.<\/p>\n<p><a id=\"kupas04gfkl\" name=\"kupas04gfkl\"><\/a><strong>Kupas, K., Ultsch, A.<\/strong>: <a title=\"kupas04gfkl\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2005\/kupas04gfkl\" target=\"_self\" rel=\"noopener\">Data Mining in Protein Binding Cavities<\/a>, Weihs, C., Gaul, W. (Eds), in: <em>Classification &#8211; the Ubiquitous Challenge, Proceedings 28th Annual Conference of the German Classification Society (GfKl 2004), Dortmund, Germany<\/em>, Springer, Heidelberg, pp, 354-361, 2005.<\/p>\n<p><a id=\"moerchen04gfkl\" name=\"moerchen04gfkl\"><\/a><strong>M\u00f6rchen, F., Ultsch, A.<\/strong>: <a title=\"moerchen04gfkl\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2005\/moerchen04gfkl\" target=\"_self\" rel=\"noopener\">Discovering Temporal Knowledge in Multivariate Time Series<\/a>, Weihs, C., Gaul, W. (Eds), in: <em>Classification; The Ubiquitous Challenge, Proceedings 28th Annual Conference of the German Classification Society (GfKl 2004)<\/em>, Dortmund, Germany, Springer, Heidelberg, pp, 272-279, 2005.<\/p>\n<p><a id=\"moerchen05finding\" name=\"moerchen05finding\"><\/a><strong>M\u00f6rchen, F., Ultsch, A.<\/strong>: <a title=\"moerchen05finding\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2005\/moerchen05finding\" target=\"_self\" rel=\"noopener\">Finding persisting states for knowledge discovery in time series<\/a>, in: <em>From Data and Information Analysis to Knowledge Engineering &#8211; Proceedings 29th Annual Conference of the German Classification Society (GfKl 2005)<\/em>, Magdeburg, Germany, Springer, Heidelberg, pp, 278-285, 2005.<\/p>\n<p><a id=\"moerchen05optimizing\" name=\"moerchen05optimizing\"><\/a><strong>M\u00f6rchen, F., Ultsch, A.<\/strong>: <a title=\"moerchen05optimizing\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2005\/moerchen05optimizing\" target=\"_self\" rel=\"noopener\">Optimizing Time Series Discretization for Knowledge Discovery<\/a>, Grossman, R.L., Bayardo, R., Bennet, K., Vaidya, J. (Eds), In <em>Proceedings The Eleventh ACM SIGKDD International Conference on Knowledge Discovery and Data Mining<\/em>, Chicago, IL, USA, pp, 660-665, 2005.<\/p>\n<p><a id=\"moerchen05visualization\" name=\"moerchen05visualization\"><\/a><strong>M\u00f6rchen, F., Ultsch, A., N\u00f6cker, M., Stamm, C.<\/strong>: <a title=\"moerchen05visualization\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2005\/moerchen05visualization\" target=\"_self\" rel=\"noopener\">Databionic visualization of music collections according to perceptual distance<\/a>, Joshua D. Reiss, Geraint A. Wiggins (Eds), In <em>Proceedings 6th International Conference on Music Information Retrieval (ISMIR 2005)<\/em>, London, UK, pp, 396-403, 2005.<\/p>\n<p><a id=\"moerchen05visual\" name=\"moerchen05visual\"><\/a><strong>M\u00f6rchen, F., Ultsch, A., N\u00f6cker, M., Stamm, C.<\/strong>: <a title=\"moerchen05visual\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2005\/moerchen05visual\" target=\"_self\" rel=\"noopener\">Visual mining in music collections<\/a>, in: <em>Proceedings 29th Annual Conference of the German Classification Society (GfKl 2005)<\/em>, Magdeburg, Germany, Springer, Heidelberg, 2005, (to appear).<\/p>\n<p><a id=\"moerchen05musicminer\" name=\"moerchen05musicminer\"><\/a><strong>M\u00f6rchen, F., Ultsch, A., Thies, M., L\u00f6hken, I. and N\u00f6cker, M., Stamm, C., Efthymiou, N., K\u00fcmmerer, M.<\/strong>: <a title=\"moerchen05musicminer\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2005\/moerchen05musicminer\" target=\"_self\" rel=\"noopener\">MusicMiner: Visualizing timbre distances of music as topographical maps<\/a>, Technical Report No. 47, Dept. of Mathematics and Computer Science, University of Marburg, Germany, 2005.<\/p>\n<p><a id=\"ultsch05clustering\" name=\"ultsch05clustering\"><\/a><\/p>\n<h3>2004<\/h3>\n<p><strong>Ultsch, A.<\/strong>: <a title=\"ultsch04strategies\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2004\/ultsch04strategies\" target=\"_self\" rel=\"noopener\">Strategies for an Artificial Life System to cluster high dimensional Data<\/a>, Ulrike Br\u00fcggemann, Harald Schaub, Frank Detje (Eds), In <em>Abstracting and Synthesizing the Principles of Living Systems, GWAL-6, Bamberg<\/em>, pp, 128-137, 2004.<\/p>\n<p><strong>Ultsch, A., K\u00e4mpf, D.<\/strong>: <a title=\"ultsch04knowledge\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2004\/ultsch04knowledge\" target=\"_self\" rel=\"noopener\">Knowledge Discovery in DNA Microarray Data of Cancer Patients with Emergent Self Organizing Maps<\/a>, In <em>Proceedings of the European Symposium on Artificial Neural Networks (ESANN 2004)<\/em>, pp, 501-506, 2004.<\/p>\n<table>\n<tbody>\n<tr>\n<td><strong>Kupas, K., Klebe, G., Ultsch, A.<\/strong>: <em>Comparison of substructural epitopes in enzyme active sites using self-organizing maps<\/em>, <em>Journal of Computer-Aided Molecular Design<\/em> 18, pp, 697-708, 2004.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"kupas04icba\" name=\"kupas04icba\"><\/a><strong>Kupas, K., Klebe, G., Ultsch, A.<\/strong>: <a title=\"kupas04icba\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2004\/kupas04icba\" target=\"_self\" rel=\"noopener\">An algorithm for finding similarities in protein active sites<\/a>, Matthew He, Giri Narasimhan, Sergei Petoukhov (Eds), In <em>Advances in Bioinformatics and its Applications, Proceedings of the International Conference, Nova Southeastern University, Fort Lauderdale, Florida, USA<\/em>, World Scientific, pp, 373-380, 2004.<\/td>\n<\/tr>\n<tr>\n<td>&nbsp;<\/td>\n<\/tr>\n<tr>\n<td><strong>M\u00f6rchen, F., Ultsch, A.<\/strong>: <a title=\"moerchen04mining\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2004\/moerchen04mining\" target=\"_self\" rel=\"noopener\">Mining Hierarchical Temporal Patterns in Multivariate Time Series<\/a>, Susanne Biundo, Thom W. Fr\u00fchwirth, G\u00fcnther Palm (Eds), In <em>KI 2004: Advances in Artificial Intelligence, Proceedings 27th Annual German Conference in AI<\/em>, Ulm, Germany, Springer, Heidelberg, pp, 127-140, 2004.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"moerchen04muscle\" name=\"moerchen04muscle\"><\/a><strong>M\u00f6rchen, F., Ultsch, A., Hoos, O.<\/strong>: <a title=\"moerchen04muscle\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2004\/moerchen04muscle\" target=\"_self\" rel=\"noopener\">Discovering interpretable muscle activation patterns with the Temporal Data Mining Method<\/a>, Jean-Francois Boulicaut, Floriana Esposito, Fosca Giannotti and Dino Pedreschi (Eds), In <em>Knowledge Discovery in Databases: Proceedings 8th European Conference on Principles and Practice of Knowledge Discovery in Databases (PKDD 2004)<\/em>, Pisa, Italy, Springer, pp, 512-514, 2004.<\/td>\n<\/tr>\n<\/tbody>\n<\/table>\n<h3>2003<\/h3>\n<table width=\"1768\">\n<tbody>\n<tr>\n<td>&nbsp;<\/td>\n<\/tr>\n<tr>\n<td><strong>Ultsch, A.<\/strong>: <a title=\"ultsch03maps\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2003\/ultsch03maps\" target=\"_self\" rel=\"noopener\">Maps for the Visualization of high-dimensional Data Spaces<\/a>, Proc. Workshop on Self organizing Maps (WSOM), pp. 225-230, Kyushu, Japan, 2003.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch03paretodensityestimation\" name=\"ultsch03paretodensityestimation\"><\/a><strong>Ultsch, A.<\/strong>: <a title=\"ultsch03paretodensityestimation\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2003\/ultsch03paretodensityestimation\" target=\"_self\" rel=\"noopener\">Pareto Density Estimation: A Density Estimation for Knowledge Discovery<\/a>, Baier D., Wernecke K.D. (Eds), In <em>Innovations in Classification, Data Science, and Information Systems &#8211; Proceedings 27th Annual Conference of the German Classification Society (GfKL) 2003<\/em>, Berlin, Heidelberg, Springer, pp, 91-100, 2003.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch03log\" name=\"ultsch03log\"><\/a><strong>Ultsch, A.<\/strong>: <a title=\"ultsch03log\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2003\/ultsch03log\" target=\"_self\" rel=\"noopener\">Is log ratio a good value for identifying differential expressed genes in microarray experiments?<\/a>, Technical Report No. 35, Dept. of Mathematics and Computer Science, University of Marburg, Germany, 2003.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch03optimal\" name=\"ultsch03optimal\"><\/a><strong>Ultsch, A.<\/strong>: <a title=\"ultsch03optimal\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2003\/ultsch03optimal\" target=\"_self\" rel=\"noopener\">Optimal Density Estimation in Data containing Clusters of unknown Structure<\/a>, Technical Report No. 34, Dept. of Mathematics and Computer Science, University of Marburg, Germany, 2003.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch03ustar\" name=\"ultsch03ustar\"><\/a><strong>Ultsch, A.<\/strong>: <a title=\"ultsch03ustar\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2003\/ultsch03ustar\" target=\"_self\" rel=\"noopener\">U*-Matrix: a Tool to visualize Clusters in high dimensional Data<\/a>, Technical Report No. 36, Dept. of Mathematics and Computer Science, University of Marburg, Germany, 2003.<\/td>\n<\/tr>\n<tr>\n<td>\n<p><a id=\"ultsch03datenbionik\" name=\"ultsch03datenbionik\"><\/a><strong>Ultsch, A., M\u00f6rchen, F.<\/strong>: <a title=\"ultsch03datenbionik\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2003\/ultsch03datenbionik\" target=\"_self\" rel=\"noopener\">Datenbionik<\/a>, Kooperationspartner in Forschung und InnovationWiesbaden, pp, 25-26, 2003.<\/p>\n<p><strong>T. Hain, A. Ultsch, et. al.<\/strong>: <a title=\"hain03mdeat\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2003\/hain03mdeat\" target=\"_self\" rel=\"noopener\">MDEAT &#8211; a new databionic evaluation and analysis tool to identify the virulence regulon of Listeria monocytogenes as a model system<\/a>, In <em>Proceedings European Conference on Prokaryotic Genomes, Goettingen<\/em>, 2003.<\/p>\n<p><a id=\"moerchen03time\" name=\"moerchen03time\"><\/a><strong>M\u00f6rchen, F.<\/strong>: <a title=\"moerchen03time\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2003\/moerchen03time\" target=\"_self\" rel=\"noopener\">Time series feature extraction for data mining using DWT and DFT<\/a>, Technical Report No. 33, Dept. of Mathematics and Computer Science, University of Marburg, Germany, 2003.<\/p>\n<\/td>\n<\/tr>\n<\/tbody>\n<\/table>\n<h3>2002<\/h3>\n<table>\n<tbody>\n<tr>\n<td><strong>Ultsch, A.<\/strong>: <a title=\"02ultschmobilephone\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/02ultschmobilephone.pdf\" target=\"_self\" rel=\"noopener\">Emergent Self-Organizing Feature Maps used for Prediction and Prevention of Churn in Mobile Phone Markets<\/a>, <em>Journal of Targeting,&nbsp;Measurement and Analysis for Marketing&nbsp;10(4) , &nbsp;pp. 314-324, 2002.<\/em><\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch02data\" name=\"ultsch02data\"><\/a><strong>Ultsch, A.<\/strong>: <a title=\"ultsch02data\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2002\/ultsch02data\" target=\"_self\" rel=\"noopener\">Data Mining as an Application for Artificial Life<\/a>, Polani, D. et al. (Eds), In <em>Abstracting and Synthesizing the Principles of Living Systems, GWAL-5, L\u00fcbeck<\/em>, pp. 191-199, 2002.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch02proof\" name=\"ultsch02proof\"><\/a><strong>Ultsch, A.<\/strong>: <a title=\"ultsch02proof\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2002\/ultsch02proof\" target=\"_self\" rel=\"noopener\">Proof of Pareto&#8217;s 80\/20 Law and Precise Limits for ABC-Analysis<\/a>, Technical Report No. 02\/c, Databionics Research Group, University of Marburg, Germany, 2002.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch02dna\" name=\"ultsch02dna\"><\/a><strong>Ultsch, A., Eilers, M.<\/strong>: <a title=\"ultsch02dna\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2002\/ultsch02dna\" target=\"_self\" rel=\"noopener\">DNA Microarrays von Tumoren diagnostiziert mit datenbionischen Methoden<\/a>, Kooperationspartner in Forschung und Innovation, Wiesbaden, pp. 19-20, 2002.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch02self\" name=\"ultsch02self\"><\/a><strong>Ultsch, A., R\u00f6ske, F.<\/strong>: <a title=\"ultsch02self\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2002\/ultsch02self\" target=\"_self\" rel=\"noopener\">Self-Organizing Feature Maps Prediciting Sea Levels<\/a>, Information Sciences 144\/Elsevier, pp. 91 &#8211; 125, Amsterdam, pp. 1-4, 2002.<\/td>\n<\/tr>\n<\/tbody>\n<\/table>\n<h3>2001<\/h3>\n<table>\n<tbody>\n<tr>\n<td><a id=\"guimaraes01automated\" name=\"guimaraes01automated\"><\/a><\/td>\n<\/tr>\n<tr>\n<td><strong>Ultsch, A.<\/strong>: <a title=\"ultsch01fundamentale\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2001\/ultsch01fundamentale\" target=\"_self\" rel=\"noopener\">Fundamentale Aktienanalyse mit selbstorganisierenden Dataminingmethoden<\/a>, Kooperationspartner in Forschung und Innovation, Wiesbaden, pp. 25-26, 2001.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch01begruendung\" name=\"ultsch01begruendung\"><\/a><strong>Ultsch, A.<\/strong>: <a title=\"ultsch01begruendung\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2001\/ultsch01begruendung\" target=\"_self\" rel=\"noopener\">Eine Begr\u00fcndung der Pareto 80\/20 Regel und Grenzwerte f\u00fcr die ABC Analyse<\/a>, Technical Report No. 30, Dept. of Mathematics and Computer Science, University of Marburg, Germany, 2001.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch01completion\" name=\"ultsch01completion\"><\/a><strong>Ultsch, A., Rolf, S.<\/strong>: <a title=\"ultsch01completion\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2001\/ultsch01completion\" target=\"_self\" rel=\"noopener\">The Completion of Missing Values by Neural Nets for Data Mining<\/a>, Classification, Automation and New Media, Springer Berlin, pp. 227-234, 2001.<\/td>\n<\/tr>\n<tr>\n<td>\n<p><a id=\"ultsch01data\" name=\"ultsch01data\"><\/a><strong>Ultsch,A. DataBots<\/strong>: <a title=\"ultsch01data\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2001\/ultsch01data\" target=\"_self\" rel=\"noopener\">Data Mining as an Application for Autonomous Minirobots<\/a>, In <em>Proceedings 1st International Conference on Autonomous Minirobots for Research and Edutainment &#8211; AMiRE, Paderborn<\/em>, pp. 59 &#8211; 73, 2001.<\/p>\n<p><strong>Guimaraes, G., Peter, J., Penzel, T., Ultsch, A.<\/strong>: <a title=\"guimaraes01automated\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2001\/guimaraes01automated\" target=\"_self\" rel=\"noopener\">A method for automated temporal knowledge acquisition applied to sleep-related breathing disorders<\/a>, In <em>Artificial Intelligence in Medicine 23, Amsterdam<\/em>, pp. 211-237, 2001.<\/p>\n<\/td>\n<\/tr>\n<\/tbody>\n<\/table>\n<h3>&nbsp;<\/h3>\n<h3>2000<\/h3>\n<table>\n<tbody>\n<tr>\n<td>&nbsp;<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch00neural\" name=\"ultsch00neural\"><\/a><strong>Ultsch, A.<\/strong>: <a title=\"ultsch00neural\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2000\/ultsch00neural\" target=\"_self\" rel=\"noopener\">A Neural Network to Compare Highdimensional Data with Skewed and Unknown Distributions<\/a>, In <em>Proceedings 24. Jahrestagung, Gesellschaft f\u00fcr Klassifikation, Universit\u00e4t Passau<\/em>, 2000.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch00artificial\" name=\"ultsch00artificial\"><\/a><strong>Ultsch, A.<\/strong>: <a title=\"ultsch00artificial\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2000\/ultsch00artificial\" target=\"_self\" rel=\"noopener\">An Artificial Life Approach to DataMining<\/a>, In <em>Proceedings European Meeting of Cyberntics and Systems Research EMCSR, Wien<\/em>, 2000.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch00clustering\" name=\"ultsch00clustering\"><\/a><strong>Ultsch, A.<\/strong>: <a title=\"ultsch00clustering\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2000\/ultsch00clustering\" target=\"_self\" rel=\"noopener\">Clustering with DataBots<\/a>, In <em>Proceedings Int. Conf. Advances in Intelligent Systems Theory and Applications, AISTA, Canberra<\/em>, 2000.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch00neuronal\" name=\"ultsch00neuronal\"><\/a><strong>Ultsch, A.<\/strong>: <a title=\"ultsch00neuronal\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2000\/ultsch00neuronal\" target=\"_self\" rel=\"noopener\">The Neuronal Data Mine<\/a>, In <em>Proceedings 2nd Int. ICSC Symposium on Neural Computation NC, Berlin<\/em>, 2000.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch00visualization\" name=\"ultsch00visualization\"><\/a><strong>Ultsch, A.<\/strong>: <a title=\"ultsch00visualization\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2000\/ultsch00visualization\" target=\"_self\" rel=\"noopener\">Visualization and Classification with Artificial Life<\/a>, In <em>Proceedings Conf. Int. Fed. of Classification Societies ifcs, Namur, Belgium<\/em>, pp. 11-14, 2000.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch00relative\" name=\"ultsch00relative\"><\/a><strong>Ultsch, A.<\/strong>: <a title=\"ultsch00relative\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2000\/ultsch00relative\" target=\"_self\" rel=\"noopener\">Neural Networks Learning Relative Distances<\/a>, IJCNNInternational Joint Conference on Neural Networks, Como, 2000.<\/td>\n<\/tr>\n<tr>\n<td>\n<p><a id=\"ultsch00completion\" name=\"ultsch00completion\"><\/a><strong>Ultsch, A., Rolf, S.<\/strong>: <a title=\"ultsch00completion\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2000\/ultsch00completion\" target=\"_self\" rel=\"noopener\">The Completion of Missing Values by Neural Nets for Data Mining<\/a>, In <em>Proceedings 24. Jahrestagung, Gesellschaft f\u00fcr Klassifikation, Universit\u00e4t Passau<\/em>, 2000.<\/p>\n<p><strong>Deboeck, G. J., Ultsch, A.<\/strong>: <a title=\"deboeck00picking\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/2000\/deboeck00picking\" target=\"_self\" rel=\"noopener\">Picking Stocks with Emergent Self-Organizing Value Maps<\/a>, Neural Networks World, Vol 10, Inst. Computer Science, Prague, pp. 203-216, 2000.<\/p>\n<\/td>\n<\/tr>\n<\/tbody>\n<\/table>\n<h3>&nbsp;<\/h3>\n<h3>1999<\/h3>\n<table>\n<tbody>\n<tr>\n<td><a id=\"guimaraes99method\" name=\"guimaraes99method\"><\/a><\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch99data\" name=\"ultsch99data\"><\/a><strong>Ultsch, A.<\/strong>: <a title=\"ultsch99data\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/1999\/ultsch99data\" target=\"_self\" rel=\"noopener\">Data Mining and Knowledge Discovery with Emergent Self-Organizing Feature Maps for Multivariate Time Series<\/a>, In Oja, E. &amp; Kaski, S. (Eds.), Kohonen maps, (1 ed., pp. 33-46), Elsevier, 1999<\/td>\n<\/tr>\n<tr>\n<td>\n<p><a id=\"ultsch99clustering\" name=\"ultsch99clustering\"><\/a><strong>Ultsch, A.<\/strong>: <a title=\"ultsch99clustering\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/1999\/ultsch99clustering\" target=\"_self\" rel=\"noopener\">Clustering with DataBots<\/a>, Technical Report No. 19, Dept. of Mathematics and Computer Science, University of Marburg, Germany, 1999.<\/p>\n<p><strong>Gabriela Guimaraes, Alfred Ultsch<\/strong>: <a title=\"guimaraes99method\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/1999\/guimaraes99method\" target=\"_self\" rel=\"noopener\">A method for temporal knowledge conversion<\/a>, Hand, D.J., Kok, J.N., Berthold, M.R. (Eds), In <em>Advances in Intelligent Data Analysis, Proceedings of the 3rd Int. Symp., Amsterdam, The Netherlands, Sprigner, Berlin<\/em>, pp. 369-380, 1999.<\/p>\n<\/td>\n<\/tr>\n<\/tbody>\n<\/table>\n<h3>1998<\/h3>\n<table>\n<tbody>\n<tr>\n<td><a id=\"kleine98neuronal\" name=\"kleine98neuronal\"><\/a><\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch98integration\" name=\"ultsch98integration\"><\/a><strong>Ultsch, A.<\/strong>: <a title=\"ultsch98integration\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/1998\/ultsch98integration\" target=\"_self\" rel=\"noopener\">The Integration of Connectionist Models with Knowledge-based Systems: Hybrid Systems<\/a>, In <em>In Proceedings of the IEEE SMC 98 International Conference, San Diego<\/em>, pp. 1530-1535, 1998.<\/td>\n<\/tr>\n<tr>\n<td>\n<p><a id=\"ultsch98hybride\" name=\"ultsch98hybride\"><\/a><strong>Ultsch, A.<\/strong>: <em>Hybride Systeme: Der Einsatz von wissensverarbeitenden Systemen<\/em>, Tagungsband der CoWAN 98 (Cottbusser Workshop Aspekte Neuronalen Lernens), Shaker Verlag, pp. 221-229, 1998.<\/p>\n<p><strong>Kleine T. O., Ultsch A.<\/strong>: <em>Neuronal unterst\u00fctzte Expertensysteme zur Liquoranalytik<\/em>, Informatik, Biometrie und Epidemiologie in Medizin und Biologie, Vol. 29. M\u00fcnchen, pp. 12-21, 1998.<\/p>\n<\/td>\n<\/tr>\n<\/tbody>\n<\/table>\n<h3>1997<\/h3>\n<table>\n<tbody>\n<tr>\n<td><strong>Ultsch, A., Kleine, T.O., Korus, D., Farsch, S., Guimaraes, G., Pietzuch, W., Simon, J.<\/strong>: <em>Evaluation of Automatic and Manual Knowledge Acquisition for Cerebrospinal Fluid (CSF) Diagnosis<\/em>, Lecture Notes in Artificial Intelligence in Medicine, AIME&#8217;97, Grenoble, Springer, 1997.<\/td>\n<\/tr>\n<\/tbody>\n<\/table>\n<h3>1996<\/h3>\n<table>\n<tbody>\n<tr>\n<td><a id=\"guimaraes96symbolic\" name=\"guimaraes96symbolic\"><\/a><\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch96hybride\" name=\"ultsch96hybride\"><\/a><strong>Ultsch, A.<\/strong>: <em>Hybride Systeme &#8211; der Einsatz von Konnektionistischen Modellen in wissensverarbeitenden Systemen<\/em>, HeKoNN&#8217;96, M\u00fcnster, 1996.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch96self\" name=\"ultsch96self\"><\/a><strong>Ultsch, A.<\/strong>: <em>Self Organizing Neural Networks perform different from statistical k-means clustering<\/em>, BMBF Statusseminar K\u00fcnstliche Intelligenz, Neuroinformatik und Intelligente Systeme, M\u00fcnchen, pp. 433-443, 1996.<\/td>\n<\/tr>\n<tr>\n<td>\n<p><a id=\"ultsch96classification\" name=\"ultsch96classification\"><\/a><strong>Ultsch, A., Guimaraes, G.<\/strong>: <em>Classification and Prediction of Hail using Self-Organizing Neuronal Networks<\/em>, International Conference on Neural Networks (ICNN), Washington DC, USA, 1996.<\/p>\n<p><strong>Guimaraes, G., Ultsch, A.<\/strong>: <em>A Symbolic Representation for Patterns in Time Series using Definitive Clause Grammar<\/em>, 20th Annual Conference of Gesellschaft f\u00fcr Klassifikation, Freiburg, 1996.<\/p>\n<\/td>\n<\/tr>\n<\/tbody>\n<\/table>\n<h3>1995<\/h3>\n<table>\n<tbody>\n<tr>\n<td><a id=\"ultsch95integration\" name=\"ultsch95integration\"><\/a><strong>Ultsch, A, Korus, D., Guimaraes, G., Li, H.<\/strong>: <a title=\"Integration\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/ultsch95integration.pdf\">Integration von Neuronalen Netzen mit wissensbasierten Systemen<\/a>, Reihe Mathematik M-01\/, pp. 144-153, 1995.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch95neural\" name=\"ultsch95neural\"><\/a><strong>Ultsch, A, Korus, D., Kleine, T. O.<\/strong>: <a title=\"ultsch95neural\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/1995\/ultsch95neural\" target=\"_self\" rel=\"noopener\">Integration of Neural Networks and Knowledge-Based Systems in Medicine<\/a>, Barahona, P., Stefanelli, M., Wyatt, J.: Artificial Intelligence in Medicine, Lecture Notes in Artificial Intelligence 934, Springer, pp. 425-426, 1995.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch95automatic\" name=\"ultsch95automatic\"><\/a><strong>Ultsch, A.<\/strong>: <a title=\"ultsch95automatic\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/1995\/ultsch95automatic\" target=\"_self\" rel=\"noopener\">Automatic Acquisition of Symbolic Knowledge from Subsymbolic Neural Networks<\/a>, FORWISS Report, KI-Workshop Informationsfilterung, Erlangen, M\u00fcnchen, Passau, 1995.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch95kmeans\" name=\"ultsch95kmeans\"><\/a><strong>Ultsch, A.<\/strong>: <a title=\"ultsch95kmeans\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/1995\/ultsch95kmeans\" target=\"_self\" rel=\"noopener\">Self Organizing Neural Networks perform different from statistical k-means clustering<\/a>, Gesellschaft f\u00fcr Klassifikation, Basel, 1995.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch95medical\" name=\"ultsch95medical\"><\/a><strong>Ultsch, A., Farsch, S., Li, H.<\/strong>: <a title=\"ultsch95medical\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/1995\/ultsch95medical\" target=\"_self\" rel=\"noopener\">Automatic Acquistion of Medical Knowledge from Data sets with Neural Networks<\/a>, In <em>Proceedings KI&#8217;95, Bielefeld\/Germany, Advances in Artificial Ingelligence, Springer<\/em>, pp. 258-260, 1995.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch95expert\" name=\"ultsch95expert\"><\/a><strong>Ultsch, A., Korus, D.<\/strong>: <a title=\"ultsch95expert\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/1995\/ultsch95expert\" target=\"_self\" rel=\"noopener\">Integration of Neural Networks and Expert Systems in Medicine<\/a>, <em>Europ. Journal of Clinical Chemistry and Clinical Biochemistry<\/em> 33(4), pp. A41-A42, 1995.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch95automatic\" name=\"ultsch95automatic\"><\/a><strong>Ultsch, A., Korus, D.<\/strong>: <a title=\"ultsch95automatic2\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/1995\/ultsch95automatic2\" target=\"_self\" rel=\"noopener\">Automatic Acquisition of Symbolic Knowledge from Subsymbolic Neural Networks<\/a>, In <em>Proceedings 3rd Europ. Congress on Intelligent Techniques and Soft Computing EUFIT&#8217;95, Aachen\/Germany, AugVol. I, pp. 326-331<\/em>, pp. 28-31, 1995.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch95erwerb\" name=\"ultsch95erwerb\"><\/a><strong>Ultsch, A., Korus, D.<\/strong>: <a title=\"ultsch95erwerb\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/1995\/ultsch95erwerb\" target=\"_self\" rel=\"noopener\">Erwerb von Fuzzy-Wissen aus Selbstorganisierenden Neuronalen Netzen<\/a>, In <em>Proceedings 3. Workshop Fuzzy-Neuro-Systeme&#8217;95, Darmstadt\/Germany, Novpp. 325-332,<\/em> pp. 15-17, 1995.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch95integration\" name=\"ultsch95integration\"><\/a><strong>Ultsch, A., Korus, D.<\/strong>: <a title=\"Integration\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/ultsch95integration.pdf\">Integration of Neural Networks with Knowledge-Based Systems<\/a>, In <em>Proceedings IEEE-ICNN&#8217;95, Perth\/Australia,<\/em> 1995.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch95biochemical\" name=\"ultsch95biochemical\"><\/a><strong>Ultsch, A., Korus, D., Kleine, T. O.<\/strong>: <a title=\"ultsch95biochemical\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/ultsch95biochemical.pdf\" target=\"_self\" rel=\"noopener\">Neural Networks in Biochemical Analysis<\/a>, <em>Europ. Journal of Clinical Chemistry and Clinical Biochemistry<\/em> 33(4), pp. A144-A145, 1995.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch95medicine\" name=\"ultsch95medicine\"><\/a><strong>Ultsch, A., Korus, D., Kleine, T. O.<\/strong>: <a title=\"ultsch95medidine\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/ultsch95medicine.pdf\" target=\"_self\" rel=\"noopener\">Integration of Neural Networks and Knowledge Based Systems in Medicine<\/a>, In <em>Proceedings Compana&#8217;95, W\u00fcrzburg\/Germany, Octto be publ. in a special vol. of Chemometrics and Intelligent Laboratory Systems, Elsevier Science<\/em>, pp. 4-6, 1995.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch95neural\" name=\"ultsch95neural\"><\/a><strong>Ultsch, A., Korus, D., Wehrmann, A.<\/strong>: <a title=\"ultsch95neural\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/ultsch95neural.pdf\" target=\"_self\" rel=\"noopener\">Neural Networks and their Rules for Classification in Marine Geology<\/a>, In <em>Raum und Zeit in Umweltinformationssystemen, Bd. 7; Proceedings 9th Intl. Symp. Comp. Sci. for Environmental Protection CSEP&#8217;95, Berlin, Sept, Vol. I, Metropolis-Verlag<\/em>, pp. 676-693, 1995.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch95neuronale\" name=\"ultsch95neuronale\"><\/a><strong>Ultsch,A.<\/strong>: <em>Neuronale Netze zur Interpretation von Daten<\/em>, alma mater Philippina, Marburger Universit\u00e4tsbund, pp. 16-19, 1995.<\/td>\n<\/tr>\n<\/tbody>\n<\/table>\n<h3>1994<\/h3>\n<table>\n<tbody>\n<tr>\n<td><a id=\"palm94knowledge\" name=\"palm94knowledge\"><\/a><\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch94einsatzmoeglichkeiten\" name=\"ultsch94einsatzmoeglichkeiten\"><\/a><strong>Ultsch, A.<\/strong>: <em>Einsatzm\u00f6glichkeiten von Neuronalen Netzen im Umweltbereich<\/em>, Umweltinformatik HdI 13.3, ISDN227238, Oldenbourg Verlag M\u00fcnchen 1994, pp. 201-226, 1994.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch94integration\" name=\"ultsch94integration\"><\/a><strong>Ultsch, A.<\/strong>: <em>The Integration of Neural Networks with Symbolic Knowledge Processing<\/em>, Diday et al.: New Approaches in Classification and Data Analysis, Springer Verlag, pp. 445-454, 1994.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch94hail\" name=\"ultsch94hail\"><\/a><strong>Ultsch, A., Guimaraes, G., Halmans, G.<\/strong>: <a title=\"ultsch94hail\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/1994\/ultsch94hail\" target=\"_self\" rel=\"noopener\">Self Organizing Neural Networks and hailstorm prediction<\/a>, Gesellschaft f\u00fcr Klassifikation e.V., Oldenburg, 1994.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch94logic\" name=\"ultsch94logic\"><\/a><strong>Ultsch, A., Guimaraes, G., Weber, V.<\/strong>: <a title=\"ultsch94logic\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/1994\/ultsch94logic\" target=\"_self\" rel=\"noopener\">Self Organizing Feature Maps for Logical Unification<\/a>, In <em>Proceedings of WCES, Lisboa<\/em>, 1994.<\/td>\n<\/tr>\n<tr>\n<td>\n<p><a id=\"ultsch94benchmark\" name=\"ultsch94benchmark\"><\/a><strong>Ultsch, A., Vetter C.<\/strong>: <a title=\"ultsch94benchmark\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/1994\/ultsch94benchmark\" target=\"_self\" rel=\"noopener\">Selforganizing Feature Maps versus Statistical Clustering: A Benchmark<\/a>, Technical Report No. 9, Dept. of Mathematics and Computer Science, University of Marburg, Germany, 1994.<\/p>\n<p><strong>Palm, G., Ultsch, A., Goser, K., R\u00fcckert, U.<\/strong>: <em>Knowledge Processing in Neural Architecture<\/em>, VLSI for Neural Networks and Artificial Intelligence, New York, pp. 207-216, 1994.<\/p>\n<p><strong>Schweizer, M., Fohn, P. M. B., Schweizer, J., Ultsch, A.<\/strong>: <em>A hybrid expert system for avalanche forecasting<\/em>, In <em>Paper presented at the Information and Communications Technologies in Tourism. Proceedings of the International Conference., Innsbruck, Austria<\/em>, 1994.<\/p>\n<\/td>\n<\/tr>\n<\/tbody>\n<\/table>\n<h3>&nbsp;<\/h3>\n<h3>1993<\/h3>\n<table width=\"1518\">\n<tbody>\n<tr>\n<td><a id=\"ultsch93monitoring\" name=\"ultsch93monitoring\"><\/a><strong>Ultsch, A.<\/strong>: <a title=\"monitoring\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/ultsch93monitoring.pdf\" target=\"_self\" rel=\"noopener\">Self-Organized Feature Maps for Monitoring and Knowledge Acquisition of a Chemical Process<\/a>, In <em>Proceedings Intl. Conf. on Artificial Neural Networks (ICANN), Amsterdam, SepSpringer-Verlag<\/em>, pp. 864-867, 1993.<\/td>\n<td>&nbsp;<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch93integration\" name=\"ultsch93integration\"><\/a><strong>Ultsch, A.<\/strong>: <a title=\"integration93\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/ultsch93integration.pdf\" target=\"_self\" rel=\"noopener\">The Integration of Neural Networks with Symbolic Knowledge Processing<\/a>, In <em>Proceedings Conference of the International Federation of Classification Societies (IFCS-93) in Paris,<\/em> 1993.<\/td>\n<td>&nbsp;<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch93knowledge\" name=\"ultsch93knowledge\"><\/a><strong>Ultsch, A.<\/strong>: <a title=\"knowledge93\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/ultsch93knowledge.pdf\" target=\"_self\" rel=\"noopener\">Knowledge Extraction from Self-organizing Neural Networks<\/a>, Information and Classification, Berlin, Springer, pp. 301-306, 1993.<\/td>\n<td>&nbsp;<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch93self\" name=\"ultsch93self\"><\/a><strong>Ultsch, A.,<\/strong>: <em>Self-organizing Neural Networks for Visualization and Classification<\/em>, Information and Classification, Berlin, Springer, pp. 307-313, 1993.<\/td>\n<td>&nbsp;<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch93artificial\" name=\"ultsch93artificial\"><\/a><strong>Ultsch, A., Guimaraes, G., Korus, D., Li, H.<\/strong>: <a title=\"artificial93\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/ultsch93artificial.pdf\" target=\"_self\" rel=\"noopener\">Knowledge Extraction from Artificial Neural Networks and Applications<\/a>, Transputer-Anwender-Treffen \/ World-Transputer-Congress, September 1993, Aachen, Tagungsband TAT\/WTC&#8217;93, Springer, pp. 194-203, 1993.<\/td>\n<td>&nbsp;<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch93automatic\" name=\"ultsch93automatic\"><\/a><strong>Ultsch, A., Li, H.<\/strong>: <a title=\"automatic93\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/ultsch93automatic.pdf\" target=\"_self\" rel=\"noopener\">Automatic Acquisition of Symbolic Knowledge from Subsymbolic Neural Networks<\/a>, In <em>Proceedings of International Conference on Signal Processing (ICSP&#8217;93), Peking, Vol II<\/em>, pp. 1201-1204, 1993.<\/td>\n<td>&nbsp;<\/td>\n<\/tr>\n<tr>\n<td>\n<p><a id=\"ultsch93connectionist\" name=\"ultsch93connectionist\"><\/a><strong>Ultsch, A., Mantyk, R., Halmans, G.<\/strong>: <em>A connectionist knowledge acquisition tool CONKAT<\/em>, Artificial Intelligence Frontiers in Statistics, Chapman &amp; Hall, pp. 256-263, 1993.<\/p>\n<p><strong>Palm, G., Ultsch, A., Goser, K., R\u00fcckert, U.<\/strong>: <em>Knowledge Processing in Neural Architecture<\/em>, VLSI for Neural Networks and Artificial Intelligence, Plenum Publ., New York, 1993.<\/p>\n<\/td>\n<td>&nbsp;<\/td>\n<\/tr>\n<\/tbody>\n<\/table>\n<h3>1992<\/h3>\n<table>\n<tbody>\n<tr>\n<td><a id=\"ultsch92knowledge\" name=\"ultsch92knowledge\"><\/a><strong>Ultsch, A.<\/strong>: <em>Knowledge Acquisition with Self-Organizing Neural Networks<\/em>, Alexsander, I., Taylor, J. (Eds), In <em>Artificial Neural Networks, Proceedings ICANN, Brighton U.K.<\/em>, pp. 735-740, 1992.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch92self\" name=\"ultsch92self\"><\/a><strong>Ultsch, A.<\/strong>: <em>Self-Organizing Neural Networks for Knowledge Acquisition<\/em>, In <em>Proc ECAI, Wien<\/em>, pp. 208-210, 1992.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch92visualization\" name=\"ultsch92visualization\"><\/a><strong>Ultsch, A.<\/strong>: <em>Self-Organizing Neural Networks for Visualization and Classification<\/em>, in: <em>Proceedings Conf. Soc. for Information and Classification, Dortmund,<\/em> 1992.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch92selbstorganisierende\" name=\"ultsch92selbstorganisierende\"><\/a><strong>Ultsch, A., Guimaraes, G., Korus, D., Li, H.<\/strong>: <a title=\"92ultschselbstorganisierende\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/92ultschselbstorganisierende.pdf\" target=\"_self\" rel=\"noopener\">Selbstorganisierende Neuronale Netze auf Transputern<\/a>, In <em>Proceedings TAT 92, Transputer Anwender Treffen, Aachen, Springer<\/em>, 1992.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch92kohonen\" name=\"ultsch92kohonen\"><\/a><strong>Ultsch, A., Siemon, H.P.<\/strong>: <em>Kohonen Neural Networks for Exploratory Data Analysis<\/em>, In <em>Proceedings Conf. Soc. for Information and Classification, Dortmund,<\/em> 1992.<\/td>\n<\/tr>\n<\/tbody>\n<\/table>\n<h3>1991<\/h3>\n<table>\n<tbody>\n<tr>\n<td><a id=\"ultsch91integration\" name=\"ultsch91integration\"><\/a><strong>Ultsch, A.<\/strong>: <em>The Integration of Neuronal Networks with Expert Systems<\/em>, In <em>Proceedings Workshop on Industrial Applications of Neural Networks, Ascona, Vol. III,<\/em> pp. 3-7, 1991.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch91konnektionistische\" name=\"ultsch91konnektionistische\"><\/a><strong>Ultsch, A.<\/strong>: <em>Konnektionistische Modelle und ihre Integration mit wissensbasierten Systemen<\/em>, Forschungsbericht Nr. 396, Institut f\u00fcr Informatik, Universit\u00e4t Dortmund, DortmundHabilitationsschrift, 1991.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch91data\" name=\"ultsch91data\"><\/a><strong>Ultsch, A., Halmans, G.<\/strong>: <em><a title=\"91datanomalization\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/91datanomalization.pdf\" target=\"_self\" rel=\"noopener\">Data Normalization with Self-Organizing Feature Maps<\/a><\/em>, In <em>Proceedings Intl. Joint Conf. Neural Networks, Seattle, WA, July, Vol. I<\/em>, pp. 403-407, 1991.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch91transformation\" name=\"ultsch91transformation\"><\/a><strong>Ultsch, A., Halmans, G.<\/strong>: <em>Die Transformation experimenteller Verteilungen durch eine Self-Organizing Feature Map<\/em>, Ziegler, H. (Eds), In <em>Konnektionismus: Beitr\u00e4ge aus Theorie und Praxis, Proceedings &amp;OUML;GAI, Wien<\/em>, pp. 32-40, 1991.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch91neuronale\" name=\"ultsch91neuronale\"><\/a><strong>Ultsch, A., Halmans, G.<\/strong>: <em>Neuronale Netze zur Unterst\u00fctzung der Umweltforschung<\/em>, Symp. Computer Science for Environmental Protection, Munich, Informatik Fachberichte 296, Springer, 1991.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch91connectionist\" name=\"ultsch91connectionist\"><\/a><strong>Ultsch, A., Halmans, G., Mantyk, R.<\/strong>: <em>A Connectionist Knowledge Acquisition Tool: CONKAT<\/em>, In <em>Proceedings International Workshop on Artificial Intelligence and Statistics, JanuaryFt. Lauderdale,FL<\/em>, pp. 2-5, 1991.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch91conkat\" name=\"ultsch91conkat\"><\/a><strong>Ultsch, A., Halmans, G., Mantyk, R.<\/strong>: <em>CONKAT: A Connectionist Knowledge Acquisition Tool<\/em>, In <em>Proceedings IEEE International Conference on System Sciences, JanuaryHawaiiVol. 1, pp, 507 &#8211; 513<\/em>, pp. 9-11, 1991.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch91transformation\" name=\"ultsch91transformation\"><\/a><strong>Ultsch, A., Halmans, G., Schulz, K.<\/strong>: <a title=\"91transformation\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/91transformation.pdf\" target=\"_self\" rel=\"noopener\"><em>Die Transformation experimenteller Verteilungen durch eine Self-Organizing Feature Map<\/em>, Mustererkennung<\/a>, 13. DAGM Symposium, pp. 207-214, 1991.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch91control\" name=\"ultsch91control\"><\/a><strong>Ultsch, A., Hannuschka, R., Hartmann, U., Mandischer, M., Weber, V.<\/strong>: <em>Control of Prolog-Proofs using Connectionist Networks<\/em>, In <em>Proceedings Conf. Information Systems Architecture and Technologies ISAT, Wroclaw<\/em>, pp. 175-183, 1991.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch91optimizing\" name=\"ultsch91optimizing\"><\/a><strong>Ultsch, A., Hannuschka, R., Hartmann, U., Mandischer, M., Weber, V.<\/strong>: <a title=\"91optimizing\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/91optimizing.pdf\" target=\"_self\" rel=\"noopener\"><em>Optimizing Logical Proofs with Connectionist Networks<\/em><\/a>, In <em>Proceedings Intl. Conf. Artificial Neural Networks, Vol. I, Helsinki,<\/em> pp. 585-590, 1991.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch91automatische\" name=\"ultsch91automatische\"><\/a><strong>Ultsch, A., H\u00f6ffgen, K.-U., P.G. ForT2<\/strong>: <em>Automatische Wissensakquisition f\u00fcr Fuzzy-Expertensysteme aus selbstorganisierenden, neuronalen Netzen<\/em>, Forschungsbericht Nr. 404, Fachbereich Informatik, Universit\u00e4t Dortmund, ISSN, pp. 0933-6192, 1991.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch91genetic\" name=\"ultsch91genetic\"><\/a><strong>Ultsch, A., H\u00f6ffgen, K.-U., Siemon, H. P.<\/strong>: <em>Genetic Improvements of Feedforward Nets for Approximating Functions<\/em>, Parallel Problem Solving from Nature, Springer, Berlin, pp. 294-299, 1991.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch91wissensverarbeitung\" name=\"ultsch91wissensverarbeitung\"><\/a><strong>Ultsch, A., Palm, G., R\u00fcckert, U.<\/strong>: <em><a title=\"91wissensverarbeitungpalm\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/91wissensverarbeitungpalm.pdf\" target=\"_self\" rel=\"noopener\">Wissensverarbeitung in neuronaler Architektur<\/a><\/em>, Verteilte k\u00fcnstliche Intelligenz und kooperatives Arbeiten, GI-Kongress, M\u00fcnchen, pp. 508-518, 1991.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch91kopplung\" name=\"ultsch91kopplung\"><\/a><strong>Ultsch, A., Panda, PG.<\/strong>: <em><a title=\"91kopplungpanda\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/91kopplungpanda.pdf\">Die Kopplung konnektionistischer Modelle mit wissensbasierten Systemen<\/a><\/em>, Dortmunder Expertensystemtage 91, T\u00dcV Rheinland, K\u00f6ln, pp. 74-94, 1991.<\/td>\n<\/tr>\n<\/tbody>\n<\/table>\n<h3>1990<\/h3>\n<p><strong>&nbsp;<\/strong><\/p>\n<p><strong>Ultsch, A.<\/strong>: <em>Integrating Control Knowledge in Intelligent Information Retrieval Systems<\/em>, In <em>Proceedings Int. Workshop Integrierte, intelligente Informationssysteme, Pila, Polen<\/em>, pp. 325-335, 1990.<\/p>\n<p><a id=\"ultsch90kopplung\" name=\"ultsch90kopplung\"><\/a><strong>Ultsch, A.<\/strong>: <em>Kopplung deklarativer und konnektionistischer Wissensrepr\u00e4sentation<\/em>, Endbericht der Projektgruppe PANDA, Forschungsbericht Nr. 352, Institut f\u00fcr Informatik, Universit\u00e4t Dortmund, 1990.<\/p>\n<p><a id=\"ultsch90connectionist\" name=\"ultsch90connectionist\"><\/a><strong>Ultsch, A., Hannuschka, R., Hartmann, U., Mandischer,M., Weber, V.<\/strong>: <a title=\"ultsch90\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/ultsch90prolog.pdf\" target=\"_self\" rel=\"noopener\"><em>Connectionist Represented Control Knowledge for Prolog<\/em><\/a>, In <em>Proceedings Neuro Nimes<\/em>, pp. 559-563, 1990.<\/p>\n<p><a id=\"ultsch90learning\" name=\"ultsch90learning\"><\/a><strong>Ultsch, A., Hannuschka, R., Hartmann, U., Weber, V.<\/strong>: <em>Learning of Control Knowledge for Symbolic Proofs with Backpropagation Networks<\/em>, Eckmiller, R., Hartmann, G., Hauske, G. (Eds), In <em>Proceedings Conf. on Parallel Processing in Neural Systems and Computers, Elsevier, North-Holland, Proceedings ICNC, D\u00fcsseldorf<\/em>, pp. 499-502, 1990.<\/p>\n<p><a id=\"ultsch90kohonen\" name=\"ultsch90kohonen\"><\/a><strong>Ultsch, A., Siemon, H.P.<\/strong>: <a title=\"ultschsiemnon90_defumatrix\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/publikationen\/ultschsiemon90_defumatrix.pdf\" target=\"_self\" rel=\"noopener\"><em>Kohonen&#8217;s Self Organizing Feature Maps for Exploratory Data Analysis<\/em>, In<\/a> <em><a title=\"UltschSiemon90\" href=\"https:\/\/www.uni-marburg.de\/fb12\/arbeitsgruppen\/datenbionik\/pdf\/pubs\/1990\/ultschsiemon90.pdf\" target=\"_self\" rel=\"noopener\">Proceedings Intern. Neural Networks<\/a>, Kluwer Academic Press, Paris<\/em>, pp. 305-308, 1990.<\/p>\n<table width=\"1518\">\n<tbody>\n<tr>\n<td>\n<p><a id=\"becks90parallel\" name=\"becks90parallel\"><\/a><strong>Becks, K.H, Cremers, A.B., Hemker, A., Ultsch, A.<\/strong>: <em>Parallel Process Interfaces to Knowledge Systems<\/em>, Eckmiller, R., Hartmann, G., Hauske, G. (Eds), In <em>Proceedings Conf. on Parallel Processing in Neural Systems and Computers, Elsevier, North-Holland, Proceedings ICNC, D\u00fcsseldorf<\/em>, pp. 465-470, 1990.<\/p>\n<p><strong>Hellingrath, B., Joemann, J., Reichwein, G., Ultsch, A.<\/strong>: <em>Radikaler Konstruktivismus<\/em>, Forschungsbericht Nr. 288, Institut f\u00fcr Informatik, Universit\u00e4t Dortmund, 1990.<\/p>\n<p><strong>H\u00f6ffgen, K.-U., Siemon, H. P., Ultsch, A.<\/strong>: <em>Genetic Improvements of Feedforward Nets for Approximating Functions<\/em>, In <em>Proceedings Intl. Workshop on Parallel Problem Solving from Nature, Dortmund,<\/em> 1990.<\/p>\n<p><a id=\"siemon90kohonen\" name=\"siemon90kohonen\"><\/a><strong>Siemon, H.P., Ultsch,A.<\/strong>: <em>Kohonen Networks on Transputers: Implementation and Animation<\/em>, in: <em>Proceedings Intern. Neural Networks, Kluwer Academic Press, Paris<\/em>, pp. 643-646, 1990.<\/p>\n<p><a id=\"ultsch90integrating\" name=\"ultsch90integrating\"><\/a><\/p>\n<\/td>\n<\/tr>\n<\/tbody>\n<\/table>\n<h3>1989<\/h3>\n<table>\n<tbody>\n<tr>\n<td><a id=\"ultsch89konnektionistische\" name=\"ultsch89konnektionistische\"><\/a><strong>Ultsch, A.<\/strong>: <em>Konnektionistische Modelle der k\u00fcnstlichen Intelligenz<\/em>, Skriptum zur Vorlesung, Universit\u00e4t Dortmund, 1989.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch89prolog\" name=\"ultsch89prolog\"><\/a><strong>Ultsch, A.<\/strong>: <em>Prolog And Neural Distributed Architectures<\/em>, Technischer Bericht, Universit\u00e4t Dortmund, 1989.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch89neurocomputing\" name=\"ultsch89neurocomputing\"><\/a><strong>Ultsch, A., Cremers, A.B.<\/strong>: <em>Neurocomputing &#8211; Foundations of Research<\/em>, Seminarbericht, Universit\u00e4t Dortmund, 1989.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch89exploratory\" name=\"ultsch89exploratory\"><\/a><strong>Ultsch, A., Siemon, H.P.<\/strong>: <em>Exploratory Data Analysis: Using Kohonen Networks on Transputers<\/em>, Forschungsbericht Nr. 329, Universit\u00e4t Dortmund, 1989.<\/td>\n<\/tr>\n<\/tbody>\n<\/table>\n<h3>1988<\/h3>\n<table>\n<tbody>\n<tr>\n<td><a id=\"ultsch88maschinelles\" name=\"ultsch88maschinelles\"><\/a><strong>Ultsch, A.<\/strong>: <em>Maschinelles Lernen<\/em>, Skriptum, KI FS, TH Z\u00fcrich, 1988.<\/td>\n<\/tr>\n<\/tbody>\n<\/table>\n<h3>1987<\/h3>\n<table width=\"1424\">\n<tbody>\n<tr>\n<td><a id=\"ultsch87information\" name=\"ultsch87information\"><\/a><strong>Ultsch, A.<\/strong>: <em>Information Retrieval with a Knowledge-based System<\/em>, in: <em>Proceedings Intl. Conf. SEUGI<\/em>, pp. 222-231, 1987.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch87control\" name=\"ultsch87control\"><\/a><strong>Ultsch, A.<\/strong>: <em>Control for Knowledge-based Information Retrieval<\/em>, Verlag der Fachvereine, Z\u00fcrich, 1987.<\/td>\n<\/tr>\n<tr>\n<td><a id=\"ultsch87deklarative\" name=\"ultsch87deklarative\"><\/a><strong>Ultsch, A.<\/strong>: <em>Die deklarative Programmierung mit Prolog<\/em>, Output, 16 (8), Goldach Verlag, pp. 33-39, 1987.<\/td>\n<\/tr>\n<tr>\n<td>\n<p><a id=\"ultsch87einfuehrung\" name=\"ultsch87einfuehrung\"><\/a><strong>Ultsch, A.<\/strong>: <em>Eine Einf\u00fchrung in die deklarative Programmierung mit Prolog<\/em>, K\u00fcnstliche Intelligenz und Expertensysteme, Herbert Lang und Cie, Bern, pp. 89-102, 1987.<\/p>\n<p><strong>Appelrath, H.-J., Ester, M., Jasper, H., Ultsch, A.<\/strong>: <em>Das Projekt KOFIS<\/em>, Bericht Nr. 72, Inst. f. Informatik, ETH Z\u00fcrich, 1987.<\/p>\n<p><strong>Appelrath, H.-J., Ester, M., Jasper, H., Ultsch, A.<\/strong>: <em>KOFIS: ein Expertensystem zur integrierten Dokumenten- und Wissensverwaltung<\/em>, Expertensysteme &#8217;87 Konzepte und Werkzeuge, Teubner, Stuttgart, 1987.<\/p>\n<p><strong>Kiener, M., Ultsch, A.<\/strong>: <em>An Abstract Machine for Modula-2 Programs<\/em>, Bericht Nr. 73, Inst. f. Informatik, ETH Z\u00fcrich, 1987.<\/p>\n<\/td>\n<\/tr>\n<\/tbody>\n<\/table>\n<h3>1986<\/h3>\n<p><a id=\"appelrath86kofis\" name=\"appelrath86kofis\"><\/a><strong>Appelrath, H.-J., Ester, M., Jasper, H., Ultsch, A.<\/strong>: <em>KOFIS: An Expert System for Information Retrieval in Offices<\/em>, The Application of Microcomputers in Information, Documentation and Libraries, Elsevier North Holland, 1986.<\/p>\n<p><a id=\"appelrath86knowledge\" name=\"appelrath86knowledge\"><\/a><strong>Appelrath, H.-J., Ester, M., Ultsch, A.<\/strong>: <em>Knowledge-based Retrieval in an Office<\/em>, Artificial Intelligence in Economics and Management, North Holland, pp. 269-275, 1986.<\/p><\/div>\n\t\t\t\t<\/div>\n\t\t\t\t<\/div>\n\t\t\t\t\t\t<\/div>\n\t\t\t<\/div>\n\t\t<\/div>\n\t\t\t\t\t\t<\/div>\n\t\t\t<\/div>\n\t\t<\/section>\n\t\t\t\t\t\t<\/div>\n\t\t\t<\/div>\n\t\t<\/div>\n\t\t","protected":false},"excerpt":{"rendered":"<p>2020&nbsp; Ultsch, A., L\u00f6tsch, J.: The Fundamental Clustering and Projection Suite (FCPS): A data set collection to test the performance of clustering and data projection algorithms, Scientific Data, Vol.5(1), 2020.&nbsp; Hoffmann, J., Rother, M., Kaiser, U., Thrun, M. C.,&nbsp;Wilhelm, C., Gruen, A., Niebergall, U., Meissauer, U., Neubauer, A., Brendel, C.:&nbsp; Determination of CD43 and CD200&hellip;&nbsp;<a href=\"https:\/\/databionics-institute.org\/index.php\/publications\" class=\"\" rel=\"bookmark\">Read More &raquo;<span class=\"screen-reader-text\">Publications<\/span><\/a><\/p>\n","protected":false},"author":1,"featured_media":0,"parent":0,"menu_order":0,"comment_status":"closed","ping_status":"closed","template":"","meta":{"footnotes":""},"class_list":["post-698","page","type-page","status-publish","hentry"],"_links":{"self":[{"href":"https:\/\/databionics-institute.org\/index.php\/wp-json\/wp\/v2\/pages\/698","targetHints":{"allow":["GET"]}}],"collection":[{"href":"https:\/\/databionics-institute.org\/index.php\/wp-json\/wp\/v2\/pages"}],"about":[{"href":"https:\/\/databionics-institute.org\/index.php\/wp-json\/wp\/v2\/types\/page"}],"author":[{"embeddable":true,"href":"https:\/\/databionics-institute.org\/index.php\/wp-json\/wp\/v2\/users\/1"}],"replies":[{"embeddable":true,"href":"https:\/\/databionics-institute.org\/index.php\/wp-json\/wp\/v2\/comments?post=698"}],"version-history":[{"count":4,"href":"https:\/\/databionics-institute.org\/index.php\/wp-json\/wp\/v2\/pages\/698\/revisions"}],"predecessor-version":[{"id":727,"href":"https:\/\/databionics-institute.org\/index.php\/wp-json\/wp\/v2\/pages\/698\/revisions\/727"}],"wp:attachment":[{"href":"https:\/\/databionics-institute.org\/index.php\/wp-json\/wp\/v2\/media?parent=698"}],"curies":[{"name":"wp","href":"https:\/\/api.w.org\/{rel}","templated":true}]}}