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Chaotic maps based on binary particle swarm optimization for feature selection

机译:基于二进制粒子群算法的混沌图特征选择

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摘要

Feature selection is a useful pre-processing technique for solving classification problems. The challenge of solving the feature selection problem lies in applying evolutionary algorithms capable of handling the huge number of features typically involved. Generally, given classification data may contain useless, redundant or misleading features. To increase classification accuracy, the primary objective is to remove irrelevant features in the feature space and to correctly identify relevant features. Binary particle swarm optimization (BPSO) has been applied successfully to solving feature selection problems. In this paper, two kinds of chaotic maps - so-called logistic maps and tent maps - are embedded in BPSO. The purpose of chaotic maps is to determine the inertia weight of the BPSO. We propose chaotic binary particle swarm optimization (CBPSO) to implement the feature selection, in which the K-nearest neighbor (K-NN) method with leave-one-out cross-validation (LOOCV) serves as a classifier for evaluating classification accuracies. The proposed feature selection method shows promising results with respect to the number of feature subsets. The classification accuracy is superior to other methods from the literature.
机译:特征选择是解决分类问题的有用的预处理技术。解决特征选择问题的挑战在于应用能够处理通常涉及的大量特征的进化算法。通常,给定的分类数据可能包含无用的,冗余的或误导性的功能。为了提高分类精度,主要目的是删除特征空间中不相关的特征并正确识别相关特征。二进制粒子群算法(BPSO)已成功应用于解决特征选择问题。本文在BPSO中嵌入了两种混沌图谱,即所谓的逻辑图谱和帐篷图。混沌映射的目的是确定BPSO的惯性权重。我们提出了混沌二进制粒子群算法(CBPSO)来实现特征选择,其中具有留一法交叉验证(LOOCV)的K最近邻(K-NN)方法用作评估分类准确性的分类器。提出的特征选择方法在特征子集的数量方面显示出令人鼓舞的结果。分类精度优于文献中的其他方法。

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