DocumentCode :
1758805
Title :
Particle Swarm Optimization for Feature Selection in Classification: A Multi-Objective Approach
Author :
Bing Xue ; Mengjie Zhang ; Browne, Will N.
Author_Institution :
Evolutionary Comput. Res. Group, Victoria Univ. of Wellington, Wellington, New Zealand
Volume :
43
Issue :
6
fYear :
2013
fDate :
Dec. 2013
Firstpage :
1656
Lastpage :
1671
Abstract :
Classification problems often have a large number of features in the data sets, but not all of them are useful for classification. Irrelevant and redundant features may even reduce the performance. Feature selection aims to choose a small number of relevant features to achieve similar or even better classification performance than using all features. It has two main conflicting objectives of maximizing the classification performance and minimizing the number of features. However, most existing feature selection algorithms treat the task as a single objective problem. This paper presents the first study on multi-objective particle swarm optimization (PSO) for feature selection. The task is to generate a Pareto front of nondominated solutions (feature subsets). We investigate two PSO-based multi-objective feature selection algorithms. The first algorithm introduces the idea of nondominated sorting into PSO to address feature selection problems. The second algorithm applies the ideas of crowding, mutation, and dominance to PSO to search for the Pareto front solutions. The two multi-objective algorithms are compared with two conventional feature selection methods, a single objective feature selection method, a two-stage feature selection algorithm, and three well-known evolutionary multi-objective algorithms on 12 benchmark data sets. The experimental results show that the two PSO-based multi-objective algorithms can automatically evolve a set of nondominated solutions. The first algorithm outperforms the two conventional methods, the single objective method, and the two-stage algorithm. It achieves comparable results with the existing three well-known multi-objective algorithms in most cases. The second algorithm achieves better results than the first algorithm and all other methods mentioned previously.
Keywords :
Pareto optimisation; evolutionary computation; feature extraction; particle swarm optimisation; pattern classification; sorting; PSO-based multiobjective feature selection algorithms; Pareto front; classification performance; classification problems; crowding; dominance; evolutionary multiobjective algorithms; feature subsets; multiobjective particle swarm optimization; mutation; nondominated solutions; nondominated sorting; single objective feature selection method; two-stage feature selection algorithm; Error analysis; Heuristic algorithms; Optimization; Search problems; Standards; Support vector machines; Training; Feature selection; multi-objective optimization; particle swarm optimization (PSO);
fLanguage :
English
Journal_Title :
Cybernetics, IEEE Transactions on
Publisher :
ieee
ISSN :
2168-2267
Type :
jour
DOI :
10.1109/TSMCB.2012.2227469
Filename :
6381531
Link To Document :
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