A Hybrid Encoding Based Particle Swarm Optimizer for Feature Selection and Classification

Yan'an Lin, Qifan Zhuang
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Abstract

Feature selection (FS) is an important issue for classification, which aims to search the optimal feature subset to assist the classification task. Bio-inspired algorithms, such as particle swarm optimization (PSO), have shown superior performances in dealing with feature selection. However, current methods still suffer from local optimal and lack of efficient encoding manner for particles, which results in limited classification accuracy. In this paper, we proposed a hybrid encoding based PSO, HE-PSO for wrapper-based FS, where a novel encoding consisting of both integer and categorical value is applied. The new encoding way considerably takes the interactions between different features into account. In addition, a new updating strategy for particles' positions is developed, which is able to explore and search more promising and better solutions. Experimental results on benchmark data sets validate the effectiveness of our proposed approach in classification accuracy.
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基于混合编码的粒子群特征选择与分类优化算法
特征选择(FS)是分类中的一个重要问题,其目的是搜索最优的特征子集来辅助分类任务。生物启发算法,如粒子群优化(PSO),在处理特征选择方面表现出优异的性能。然而,目前的分类方法仍然存在局部最优和缺乏有效的粒子编码方式的问题,导致分类精度有限。本文提出了一种基于混合编码的粒子群算法,he -粒子群算法用于基于包装器的FS,其中采用了一种由整数和分类值组成的新颖编码。新的编码方式在很大程度上考虑了不同特征之间的相互作用。此外,提出了一种新的粒子位置更新策略,能够探索和搜索更有前途和更好的解决方案。在基准数据集上的实验结果验证了该方法在分类精度上的有效性。
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