Modified Binary Cuckoo Search for Feature Selection: A Hybrid Filter-Wrapper Approach

Yun Jiang, Xi Liu, Guolei Yan, Jize Xiao
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引用次数: 21

Abstract

Feature selection is an important pre-processing step in classification problems. It can reduce the dimensionality of a dataset and increase the accuracy and efficiency of a learning/classification algorithm. Filter methods are necessary to obtain only the relevant features to the class and to avoid redundancy. While wrapper methods are applied to get optimized features and better classification accuracy. This paper proposes a feature selection based on hybridization of mutual information feature selection (MIFS) filter and modified binary cuckoo search (MBCS) wrapper methods. The classifier accuracy of K-nearest neighbor (KNN) is used as the fitness function. The experimental results show that the hybrid filter-wrapper algorithm maintains the high classification performance achieved by wrapper methods and significantly reduce the computational time. At the same time, it reduces the number of features.
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特征选择的改进二进制布谷鸟搜索:一种混合滤波-包装方法
特征选择是分类问题中一个重要的预处理步骤。它可以降低数据集的维数,提高学习/分类算法的准确性和效率。为了只获得类的相关特征并避免冗余,必须使用过滤方法。而采用包装方法得到的特征更优,分类精度更高。提出了一种基于互信息特征选择(MIFS)滤波和改进二进制布谷鸟搜索(MBCS)包装方法的混合特征选择方法。使用k近邻(KNN)的分类器精度作为适应度函数。实验结果表明,混合滤波-包装算法在保持包装方法较高分类性能的同时,显著减少了计算时间。同时,它减少了特征的数量。
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