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Exploiting the Accumulated Evidence for Gene Selection in Microarray Gene Expression Data

机译:利用微阵列基因表达数据中基因选择的累积证据

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Feature subset selection (FSS) methods play an important role for cancer classification using microarray gene expression data. In this scenario, it is extremely important to select genes by taking into account the possible interactions with other gene subsets. This paper shows that, by accumulating the evidence in favour (or against) each gene along a search process, the obtained gene subsets may constitute better solutions, either in terms of size or in predictive accuracy, or in both, at a negligible overhead in computational cost.
机译:特征子集选择(FSS)方法使用微阵列基因表达数据发挥癌症分类的重要作用。在这种情况下,通过考虑与其他基因子集可能的相互作用来选择基因是非常重要的。本文表明,通过沿着搜索过程累积有利(或反对)每个基因的证据,所获得的基因子集可以构成更好的解决方案,无论是尺寸还是预测准确性,也可以在忽略的开销计算成本。

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