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Differential evolution for filter feature selection based on information theory and feature ranking

机译:基于信息论和特征排序的滤波器特征选择差分进化

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摘要

Feature selection is an essential step in various tasks, where filter feature selection algorithms are increasingly attractive due to their simplicity and fast speed. A common filter is to use mutual information to estimate the relationships between each feature and the class labels (mutual relevancy), and between each pair of features (mutual redundancy). This strategy has gained popularity resulting a variety of criteria based on mutual information. Other well-known strategies are to order each feature based on the nearest neighbor distance as in ReliefF, and based on the between-class variance and the within-class variance as in Fisher Score. However, each strategy comes with its own advantages and disadvantages. This paper proposes a new filter criterion inspired by the concepts of mutual information, ReliefF and Fisher Score. Instead of using mutual redundancy, the proposed criterion tries to choose the highest ranked features determined by ReliefF and Fisher Score while providing the mutual relevance between features and the class labels. Based on the proposed criterion, two new differential evolution (DE) based filter approaches are developed. While the former uses the proposed criterion as a single objective problem in a weighted manner, the latter considers the proposed criterion in a multi-objective design. Moreover, a well known mutual information feature selection approach (MIFS) based on maximum-relevance and minimum-redundancy is also adopted in single-objective and multi-objective DE algorithms for feature selection. The results show that the proposed criterion outperforms MIFS in both single objective and multi-objective DE frameworks. The results also indicate that considering feature selection as a multi objective problem can generally provide better performance in terms of the feature subset size and the classification accuracy. (C) 2017 Elsevier B.V. All rights reserved.
机译:特征选择是各种任务中必不可少的步骤,其中过滤器特征选择算法由于其简单性和快速性而变得越来越有吸引力。常见的过滤器是使用互信息来估计每个要素与类标签之间的关系(相互关联)以及每对要素之间的关系(相互冗余)。该策略已广受欢迎,从而基于互信息产生了多种标准。其他众所周知的策略是,如ReliefF中那样,基于最近的邻居距离对每个要素进行排序,如Fisher评分中那样,基于类之间的方差和类内的方差对每个要素进行排序。但是,每种策略都有其自身的优点和缺点。本文提出了一种新的过滤标准,该标准受互信息,ReliefF和Fisher分数的概念启发。提议的标准不是使用相互冗余,而是尝试选择由ReliefF和Fisher评分确定的最高排名的要素,同时提供要素和类别标签之间的相互关联性。基于提出的标准,开发了两种基于差分进化(DE)的新滤波方法。前者以加权方式将建议的准则用作单个目标问题,而后者则在多目标设计中考虑了建议的准则。此外,在单目标和多目标DE算法中还采用了基于最大相关性和最小冗余的众所周知的互信息特征选择方法(MIFS)进行特征选择。结果表明,所提出的准则在单目标和多目标DE框架中均优于MIFS。结果还表明,将特征选择视为多目标问题通常可以在特征子集大小和分类准确性方面提供更好的性能。 (C)2017 Elsevier B.V.保留所有权利。

著录项

  • 来源
    《Knowledge-Based Systems》 |2018年第15期|103-119|共17页
  • 作者单位

    Mehmet Akif Ersoy Univ, Dept Comp Technol & Informat Syst, TR-15039 Burdur, Turkey|Victoria Univ Wellington, Sch Engn & Comp Sci, Evolutionary Computat Res Grp, Wellington 6140, New Zealand;

    Victoria Univ Wellington, Sch Engn & Comp Sci, Evolutionary Computat Res Grp, Wellington 6140, New Zealand;

    Victoria Univ Wellington, Sch Engn & Comp Sci, Evolutionary Computat Res Grp, Wellington 6140, New Zealand;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Mutual information; ReliefF; Fisher Score; differential evolution; feature selection;

    机译:相互信息;救济F;Fisher评分;差异演化;特征选择;

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