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Investigating the effect of fixing the subset length on the performance of ant colony optimization for feature selection for supervised learning

机译:研究固定子集长度对用于监督学习的特征选择的蚁群优化性能的影响

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This paper studies the effect of fixing the length of the selected feature subsets on the performance of ant colony optimization (ACO) for feature selection (FS) for supervised learning. It addresses this concern by investigating: (1) determining the optimal feature subset from datamining perspective, (2) demonstrating the solution convergence in case of fixing the length of the selected feature subsets, (3) determining the subset length in ACO for subset selection problems, and (4) different stopping criteria when solving FS by ACO. Besides, two types of experiments on ACO algorithms for FS for classification and regression problems using artificial and real world datasets in two cases fixing and not fixing the length of the selected feature subsets with the use of a support vector machine. The obtained results showed that not fixing the length of the selected feature subsets is better than fixing the length of the selected feature subsets. (C) 2015 Elsevier Ltd. All rights reserved.
机译:本文研究固定选定特征子集的长度对用于监督学习的特征选择(FS)的蚁群优化(ACO)性能的影响。通过研究:(1)从数据挖掘的角度确定最佳特征子集,(2)在固定选定特征子集的长度的情况下证明解决方案收敛,(3)确定ACO中用于子集选择的子集长度,解决了这一问题。问题,以及(4)通过ACO解决FS时停止标准不同。此外,在两种情况下使用人工和现实数据集针对FS的ACO算法进行分类和回归问题的两种类型的实验,使用支持向量机固定和不固定所选特征子集的长度。获得的结果表明,不固定选定特征子集的长度比固定选定特征子集的长度更好。 (C)2015 Elsevier Ltd.保留所有权利。

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