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Citation key | Mohr2008c |
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Author | Mohr, J. and Seo, S. and Obermayer, K. |
Title of Book | Proceedings of the ICMLA '08: The Seventh International Conference on Machine Learning and Applications |
Pages | 503 – 507 |
Year | 2008 |
ISBN | 978-0-7695-3495-4 |
DOI | 10.1109/ICMLA.2008.75 |
Publisher | IEEE |
Abstract | The analysis of microarray data is a challenging task for statistical and machine learning methods, since the datasets usually contain a very large number of features (genes) and only a small number of examples (subjects). In this work, we describe a technique for gene selection and classification of microarray data based on the recently proposed potential support vector machine (P-SVM) for feature selection and a nu-SVM for classification. The P-SVM expands the decision function in terms of a sparse set of ''support features''. Based on this novel technique for feature selection, we suggest a fully automated method for gene selection, hyper-parameter optimization and microarray classification. Benchmark results are given for the two datasets provided by the ICMLA'08 Automated Micro-Array Classification Challenge. |
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