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Ensemble Feature Weighting Based on Local Learning and Diversity

机译:基于局部学习和多样性的集合特征加权

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摘要

Recently, besides the performance, the stability (robustness, i.e., the variation in feature selection results due to small changes in the data set) of feature selection is received more attention. Ensemble feature selection where multiple feature selection outputs are combined to yield more robust results without sacrificing the performance is an effective method for stable feature selection. In order to make further improvements of the performance (classification accuracy), the diversity regularized ensemble feature weighting framework is presented, in which the base feature selector is based on local learning with logistic loss for its robustness to huge irrelevant features and small samples. At the same time, the sample complexity of the proposed ensemble feature weighting algorithm is analyzed based on the VC-theory. The experiments on different kinds of data sets show that the proposed ensemble method can achieve higher accuracy than other ensemble ones and other stable feature selection strategy (such as sample weighting) without sacrificing stability.
机译:最近,除了性能,稳定性(鲁棒性,即特征选择结果的变化,由于数据集的数据集的小变化)受到更多关注。合并功能选择,其中组合多个特征选择输出以在不牺牲性能的情况下产生更强大的结果是稳定特征选择的有效方法。为了进一步改进性能(分类准确性),提出了分集正则化集合特征权重框架,其中基本特征选择器基于本地学习,其具有鲁棒性与巨大无关的功能和小样本的鲁莽损失。同时,基于VC理论分析所提出的集合特征加权算法的样本复杂性。不同种类的数据集的实验表明,所提出的集合方法可以实现比其他集合稳定性的其他稳定特征选择策略(如样品加权等更高的精度。

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