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A hybrid approach for optimal feature subset selection with evolutionary algorithms

机译:具有进化算法的最佳特征子集选择的混合方法

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Feature subset selection is very important as a preprocessing step for pattern recognition and data mining problems. The selected feature subset is expected to produce maximum possible classification accuracy with a minimum possible number of features. For optimal feature selection, a suitable evaluation function and an efficient search method are needed. There are two main approaches. In filter approach, the inherent characteristics of the data set is used for feature evaluation while in wrapper approach, the classification accuracy is used as the evaluation function. Both the approaches have relative merits and demerits. In this paper a suitable combination of both filter and wrapper approch is proposed for selection of optimal feature subset with evolutionary algorithm. Correlation based feature selection (CFS) and minimum redundancy and maximum relevance (mRMR) algorithms are used as filter evaluation approach, binary genetic algorithm (BGA) and binary particle swarm optimization (BPSO) are used as evolutionary serach algorithms. The simulation experiments are done with benchmark data sets. The simulation results show that proper hybridization approach is effective in achieving optimal feature subset selection with minimum number of features having high classification accuracy and low computational cost.
机译:特征子集选择作为模式识别和数据挖掘问题的预处理步骤非常重要。预计所选特征子集预计将产生最大可能的分类准确性,具有最小可能的功能。为了获得最佳特征选择,需要合适的评估功能和有效的搜索方法。有两种主要方法。在滤波器方法中,数据集的固有特性用于特征评估,而在包装方法中,分类精度用作评估功能。这两种方法都有相对的优点和缺点。本文提出了一种合适的滤波器和包装物批量组合,用于选择具有进化算法的最佳特征子集。基于相关的特征选择(CFS)和最小冗余和最大相关性(MRMR)算法用作滤波器评估方法,二进制遗传算法(BGA)和二进制粒子群优化(BPSO)用作进化SERACH算法。仿真实验是用基准数据集完成的。仿真结果表明,适当的杂交方法是有效实现具有高分类精度和低计算成本的最小特征的最佳特征子集选择。

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