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A Supervised Learning Technique and Its Applications to Computational Biology

机译:监督学习技术及其在计算生物学中的应用

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The problem of classifying data in spaces with thousands of dimensions have recently been addressed in literature for its importance in computational biology. An example of such applications is the analysis of genomic and proteomic data. Among the most promising techniques that classify such data in lower dimensional subspace, Top Scoring Pairs has the advantage of finding a two-dimensional subspace with a simple decision rule. In the present paper we show how this technique can take advantage from the utilization of incremental generalized eigenvalue classifier to obtain higher classification accuracy with a small training set.
机译:最近在文献中已经解决了在具有数千维的空间中对数据进行分类的问题,因为其在计算生物学中的重要性。这种应用的一个例子是基因组和蛋白质组数据的分析。在将此类数据分类为低维子空间的最有前途的技术中,“最高得分对”具有利用简单决策规则找到二维子空间的优势。在本文中,我们展示了该技术如何利用增量广义特征值分类器的优势,以较小的训练集获得更高的分类精度。

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