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Feature selection by optimizing a lower bound of conditional mutual information

机译:通过优化条件互信息的下限来进行特征选择

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摘要

A unified framework is proposed to select features by optimizing computationally feasible approximations of high-dimensional conditional mutual information (CMI) between features and their associated class label under different assumptions. Under this unified framework, state-of-the-art information theory based feature selection algorithms are rederived, and a new algorithm is proposed to select features by optimizing a lower bound of the CMI with a weaker assumption than those adopted by existing methods. The new feature selection method integrates a plug-in component to distinguish redundant features from irrelevant ones for improving the feature selection robustness. Furthermore, a novel metric is proposed to evaluate feature selection methods based on simulated data. The proposed method has been compared with state-of-the-art feature selection methods based on the new evaluation metric and classification performance of classifiers built upon the selected features. The experiment results have demonstrated that the proposed method could achieve promising performance in a variety of feature selection problems.
机译:提出了一个统一的框架,通过优化在不同假设下要素及其关联的类别标签之间的高维条件互信息(CMI)的计算可行近似来选择要素。在此统一框架下,重新提出了基于最新信息论的特征选择算法,并提出了一种新的算法来选择特征,该算法以比现有方法所采用的假设更弱的假设来优化CMI的下限。新的特征选择方法集成了一个插件组件,以区分冗余特征和无关特征,从而提高了特征选择的鲁棒性。此外,提出了一种新的度量来评估基于模拟数据的特征选择方法。基于新的评估指标和基于所选特征的分类器分类性能,将提出的方法与最新的特征选择方法进行了比较。实验结果表明,该方法可以在多种特征选择问题上取得良好的性能。

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