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Supervised redundant feature detection for tumor classification

机译:监督冗余特征检测以进行肿瘤分类

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Background As a high dimensional problem, analysis of microarray data sets is a challenging task, where many weakly relevant or redundant features affect overall performance of classifiers. Methods The previous works used redundant feature detection methods to select discriminative compact gene set, which only considered the relationship among features, not the redundancy of classification ability among features. This study propose a novel algorithm named RESI (Redundant fEature Selection depending on Instance), which considers label information in the measure of feature subset redundancy. Results Experimental results on benchmark data sets show that RESI performs better than the previous state-of-the-art algorithms on redundant feature selection methods like mRMR. Conclusions We propose an effective supervised redundant feature detection method for tumor classification.
机译:背景技术作为高维问题,对微阵列数据集的分析是一项艰巨的任务,其中许多弱相关或多余的特征会影响分类器的整体性能。方法以前的工作是使用冗余特征检测方法来选择有区别的紧凑型基因集,该方法仅考虑特征之间的关系,而不考虑特征之间分类能力的冗余。这项研究提出了一种新颖的算法,称为RESI(取决于实例的冗余特征选择),该算法在度量特征子集冗余时考虑了标签信息。结果在基准数据集上的实验结果表明,RESI在冗余特征选择方法(如mRMR)上的性能优于以前的最新算法。结论我们提出了一种有效的监督冗余特征检测方法,用于肿瘤分类。

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