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Conditional Mutual Information-Based Feature Selection Analyzing for Synergy and Redundancy

机译:基于条件互信息的特征选择分析以实现协同和冗余

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Battiti’s mutual information feature selector (MIFS) and its variant algorithms are used for many classification applications. Since they ignore feature synergy, MIFS and its variants may cause a big bias when features are combined to cooperate together. Besides, MIFS and its variants estimate feature redundancy regardless of the corresponding classification task. In this paper, we propose an automated greedy feature selection algorithm called conditional mutual information-based feature selection (CMIFS). Based on the link between interaction information and conditional mutual information, CMIFS takes account of both redundancy and synergy interactions of features and identifies discriminative features. In addition, CMIFS combines feature redundancy evaluation with classification tasks. It can decrease the probability of mistaking important features as redundant features in searching process. The experimental results show that CMIFS can achieve higher best-classification-accuracy than MIFS and its variants, with the same or less (nearly 50%) number of features.
机译:Battiti的共同信息特征选择器(MIFS)及其变体算法用于许多分类应用程序。由于MIFS及其变体忽略了功能协同作用,因此当将功能组合在一起进行协作时,可能会引起很大的偏差。此外,MIFS及其变体可以估计特征冗余,而与相应的分类任务无关。在本文中,我们提出了一种自动贪婪特征选择算法,称为基于条件互信息的特征选择(CMIFS)。基于交互信息和条件互信息之间的链接,CMIFS考虑了特征的冗余和协同交互,并标识了可区分的特征。此外,CMIFS将功能冗余评估与分类任务结合在一起。它可以减少在搜索过程中将重要特征误认为是冗余特征的可能性。实验结果表明,与MIFS及其变体相比,CMIFS可以实现更高的最佳分类精度,并且具有相同或更少(近50%)的特征数量。

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