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A filter-based bare-bone particle swarm optimization algorithm for unsupervised feature selection

机译:无监督特征选择的基于滤光片的裸骨粒子群优化算法

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摘要

Due to good exploration capability, particle swarm optimization (PSO) has shown advantages on solving supervised feature selection problems. Compared with supervised and semi-supervised cases, unsupervised feature selection becomes very difficult as a result of no label information. This paper studies a novel PSO-based unsupervised feature selection method, called filter-based bare-bone particle swarm optimization algorithm (FBPSO). Two filter-based strategies are proposed to speed up the convergence of the algorithm. One is a space reduction strategy based on average mutual information, which is used to remove irrelevant and weakly relevant features fast; another is a local filter search strategy based on feature redundancy, which is used to improve the exploitation capability of the swarm. And, a feature similarity-based evaluation function and a parameter-free update strategy of particle are introduced to enhance the performance of FBPSO. Experimental results on some typical datasets confirm superiority and effectiveness of the proposed FBPSO.
机译:由于勘探能力良好,粒子群优化(PSO)在解决受监管特征选择问题上显示了优势。与监督和半监督案件相比,由于没有标签信息,无监督的功能选择变得非常困难。本文研究了一种基于PSO的无监督特征选择方法,称为基于滤光片的裸骨粒子群优化算法(FBPSO)。提出了两个基于滤波器的策略来加速算法的收敛性。一个是基于平均互信息的空间减少策略,用于快速消除无关紧要和无关的功能;另一个是基于功能冗余的本地过滤搜索策略,用于提高群体的开发能力。并且,引入了一种基于特征的评估功能和无参数更新策略,以增强FBPSO的性能。一些典型数据集的实验结果证实了建议的FBPSO的优势和有效性。

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