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Fuzzy kernel feature selection with multi-objective differential evolution algorithm

机译:多目标差分进化算法的模糊核特征选择

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摘要

In this paper, we propose a multi-objective differential evolution-based filter approach for feature selection that interconnects fuzzy- and kernel-based information theory measures to find feature subsets that are optimal responses to the targets. In contrast to the existing filter approaches using the principles of information theory and rough set theory, our approach can be applied to continuous datasets without discretisation. Moreover, our study is the first in the literature that employs fuzzy and kernel measures to form a filter criterion for feature selection, to our knowledge. We prove various favourable results using a variety of benchmark datasets and also demonstrate that our approach can better search the dimensionality space to reach maximum predictive of the response.
机译:在本文中,我们提出了一种基于多目标差分进化的滤波方法,用于特征选择,该方法将基于模糊和基于核的信息理论度量互连,以找到对目标的最佳响应的特征子集。与使用信息论和粗糙集理论原理的现有过滤器方法相比,我们的方法可以应用于不离散化的连续数据集。此外,据我们所知,我们的研究是文献中首次使用模糊和核量度来形成特征选择的过滤标准的研究。我们使用各种基准数据集证明了各种有利结果,并且还证明了我们的方法可以更好地搜索维数空间,以达到对响应的最大预测。

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