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Multi-Label Feature Selection Using Particle Swarm Optimization: Novel Local Search Mechanisms

机译:使用粒子群算法的多标签特征选择:新型局部搜索机制

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Multi-label feature selection has become an indispensable preprocessing step of a multi-label classification problem which can reduce the number of features while maintaining or even improving the classification performance. Particle swarm optimization (PSO) has been widely applied to feature selection, but mainly for single-label classification. In comparison with single-label feature selection, multi-label feature selection is a more challenging task due to the interaction between the class labels. On such a large and complex search space, PSO usually loses its population diversity and converges to a local optimal quickly. PSO usually maintains the best position discovered during its evolutionary process, called gbest which plays an essential role in the search of PSO. We propose a novel local search strategy which improves the gbest with an expectation of preventing the premature convergence problem. The proposed local search employs a flipping o perator to search f or better feature subsets surrounding the current gbest. Experimental results on eight real-world datasets show that the proposed local search can assist PSO to evolve better feature subsets.
机译:多标签特征选择已经成为多标签分类问题的必不可少的预处理步骤,该步骤可以减少特征的数量,同时保持甚至提高分类性能。粒子群优化(PSO)已广泛应用于特征选择,但主要用于单标签分类。与单标签特征选择相比,由于类标签之间的交互作用,多标签特征选择是一项更具挑战性的任务。在如此庞大而复杂的搜索空间中,PSO通常会失去其种群多样性,并迅速收敛到局部最优状态。 PSO通常保持其进化过程中发现的最佳位置,称为gbest,它在PSO的搜索中起着至关重要的作用。我们提出了一种新颖的本地搜索策略,该策略提高了gbest的期望,从而防止了过早收敛的问题。所提出的局部搜索使用翻转运算符来搜索当前gbest周围的f个或更好的特征子集。在八个现实世界数据集上的实验结果表明,所提出的本地搜索可以帮助PSO演化出更好的特征子集。

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