4.6 Article

New mechanism for archive maintenance in PSO-based multi-objective feature selection

期刊

SOFT COMPUTING
卷 20, 期 10, 页码 3927-3946

出版社

SPRINGER
DOI: 10.1007/s00500-016-2128-8

关键词

Multi-objective; Feature selection; Classification; Particle Swarm Optimization

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In classification problems, a large number of features are typically used to describe the problem's instances. However, not all of these features are useful for classification. Feature selection is usually an important pre-processing step to overcome the problem of curse of dimensionality. Feature selection aims to choose a small number of features to achieve similar or better classification performance than using all features. This paper presents a particle swarm Optimization (PSO)-based multi-objective feature selection approach to evolving a set of non-dominated feature subsets which achieve high classification performance. The proposed algorithm uses local search techniques to improve a Pareto front and is compared with a pure multi-objective PSO algorithm, three well-known evolutionary multi-objective algorithms and a current state-of-the-art PSO-based multi-objective feature selection approach. Their performances are examined on 12 benchmark datasets. The experimental results show that in most cases, the proposed multi-objective algorithm generates better Pareto fronts than all other methods.

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