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Efficient High-Order Interaction-Aware Feature Selection Based on Conditional Mutual Information

机译:基于条件互信息的高效高阶交互感知特征选择

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This study introduces a novel feature selection approach CMICOT, which is a further evolution of filter methods with sequential forward selection (SFS) whose scoring functions are based on conditional mutual information (MI). We state and study a novel saddle point (max-min) optimization problem to build a scoring function that is able to identify joint interactions between several features. This method fills the gap of Mi-based SFS techniques with high-order dependencies. In this high-dimensional case, the estimation of MI has prohibitively high sample complexity. We mitigate this cost using a greedy approximation and binary representatives what makes our technique able to be effectively used. The superiority of our approach is demonstrated by comparison with recently proposed interaction-aware filters and several interaction-agnostic state-of-the-art ones on ten publicly available benchmark datasets.
机译:这项研究介绍了一种新颖的特征选择方法CMICOT,它是具有顺序前向选择(SFS)的滤波方法的进一步发展,其评分功能基于条件互信息(MI)。我们陈述并研究了一种新颖的鞍点(最大-最小)优化问题,以构建一个计分功能,该功能能够识别多个特征之间的联合相互作用。这种方法填补了基于Mi的SFS技术具有高阶依赖性的空白。在这种高维情况下,MI的估计具有极高的样本复杂度。我们使用贪婪近似法和二进制代表来减轻成本,这使我们的技术能够得到有效利用。通过与最近提出的交互感知过滤器以及在十个可公开获得的基准数据集上的几个与交互无关的最新技术进行比较,证明了我们方法的优越性。

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