Support Vector Machines in Bioinformatics: a Survey

نویسنده

  • Davide Chicco
چکیده

Many scientists and researchers have been considering Support Vector Machines (SVMs) as one of the most powerful and robust algorithm in machine learning. For this reason, they have been used in many fields, such as pattern recognition, image processing, robotics, and many others. Since their appearance in 1995, from an idea of Vladimir Vapnik, bioinformatics community started to use this new technique to solve the most common classification and clustering problems in the biomolecular domain. In this document, we first give a general description of Support Vector Machine technique, a technique based on the statistical learning theory (Section 1). Then we provide a survey of the many applications of the algorithm in the bioinformatics domain (Section 2). Finally, we report a short list of SVM implementation codes available on the internet (Section 3). About this survey This document is freely available and can be download from http://www.DavideChicco.it author’s website. Alessandro Lazaric (INRIA, Lille, France, EU) kindly supervised and corrected this document before publication.

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تاریخ انتشار 2012