Computational Cost Reduction in Multi-Objective Feature Selection Using Permutational-Based Differential Evolution

被引:0
作者
Barradas-Palmeros, Jesus-Arnulfo [1 ]
Mezura-Montes, Efren [1 ]
Rivera-Lopez, Rafael [2 ]
Acosta-Mesa, Hector-Gabriel [1 ]
Marquez-Grajales, Aldo [3 ]
机构
[1] Univ Veracruzana, Artificial Intelligence Res Inst, Xalapa 91097, Veracruz, Mexico
[2] Inst Tecnol Veracruz, Dept Sistemas & Comp, Veracruz 91897, Veracruz, Mexico
[3] INFOTEC Ctr Res & Innovat Informat & Commun Techno, Aguascalientes 20326, Aguascalientes, Mexico
关键词
feature selection; differential evolution; cost reduction; multi-objective optimization; CLASSIFICATION; ALGORITHM;
D O I
10.3390/mca29040056
中图分类号
O1 [数学];
学科分类号
0701 ; 070101 ;
摘要
Feature selection is a preprocessing step in machine learning that aims to reduce dimensionality and improve performance. The approaches for feature selection are often classified according to the evaluation of a subset of features as filter, wrapper, and embedded approaches. The high performance of wrapper approaches for feature selection is associated at the same time with the disadvantage of high computational cost. Cost-reduction mechanisms for feature selection have been proposed in the literature, where competitive performance is achieved more efficiently. This work applies the simple and effective resource-saving mechanisms of the fixed and incremental sampling fraction strategies with memory to avoid repeated evaluations in multi-objective permutational-based differential evolution for feature selection. The selected multi-objective approach is an extension of the DE-FSPM algorithm with the selection mechanism of the GDE3 algorithm. The results showed high resource savings, especially in computational time and the number of evaluations required for the search process. Nonetheless, it was also detected that the algorithm's performance was diminished. Therefore, the results reported in the literature on the effectiveness of the strategies for cost reduction in single-objective feature selection were only partially sustained in multi-objective feature selection.
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页数:18
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