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A PSO-based multi-objective multi-label feature selection method in classification

机译:基于PSO的多目标多标签特征选择方法

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摘要

Feature selection is an important data preprocessing technique in multi-label classification. Although a large number of studies have been proposed to tackle feature selection problem, there are a few cases for multi-label data. This paper studies a multi-label feature selection algorithm using an improved multi-objective particle swarm optimization (PSO), with the purpose of searching for a Pareto set of non-dominated solutions (feature subsets). Two new operators are employed to improve the performance of the proposed PSO-based algorithm. One operator is adaptive uniform mutation with action range varying over time, which is used to extend the exploration capability of the swarm; another is a local learning strategy, which is designed to exploit the areas with sparse solutions in the search space. Moreover, the idea of the archive, and the crowding distance are applied to PSO for finding the Pareto set. Finally, experiments verify that the proposed algorithm is a useful approach of feature selection for multi-label classification problem.
机译:特征选择是多标签分类中一种重要的数据预处理技术。尽管已经提出了许多解决特征选择问题的研究,但是对于多标签数据还是有少数情况。本文研究了一种使用改进的多目标粒子群优化(PSO)的多标签特征选择算法,其目的是搜索一组Pareto非支配解(特征子集)。使用两个新的运算符来提高所提出的基于PSO的算法的性能。一种算子是自适应均匀变异,其作用范围随时间变化,用于扩展群的探测能力。另一个是本地学习策略,该策略旨在利用搜索空间中稀疏的解决方案来开发区域。此外,将存档的想法和拥挤距离应用于PSO以查找Pareto集。最后,实验验证了该算法是一种有效的多标签分类问题的特征选择方法。

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