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Particle Swarm Optimisation and Statistical Clustering for Feature Selection

机译:特征选择的粒子群算法和统计聚类

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Feature selection is an important issue in classification, but it is a difficult task due to the large search space and feature interaction. Statistical clustering methods, which consider feature interaction, group features into different feature clusters. This paper investigates the use of statistical clustering information in particle swarm optimisation (PSO) for feature selection. Two PSO based feature selection algorithms are proposed to select a feature subset based on the statistical clustering information. The new algorithms are examined and compared with a greedy forward feature selection algorithm on seven benchmark datasets. The results show that the two algorithms can select a much smaller number of features and achieve similar or better classification performance than using all features. One of the new algorithms that introduces more stochasticity achieves the best results and outperforms all other methods, especially on the datasets with a relatively large number of features.
机译:特征选择是分类中的重要问题,但是由于搜索空间大和特征交互作用大,因此这是一项艰巨的任务。考虑要素相互作用的统计聚类方法将要素分组为不同的要素聚类。本文研究了统计聚类信息在粒子群优化(PSO)中用于特征选择的用途。提出了两种基于PSO的特征选择算法,用于基于统计聚类信息选择特征子集。对新算法进行了检查,并与七个基准数据集上的贪婪前向特征选择算法进行了比较。结果表明,与使用所有特征相比,这两种算法可以选择的特征数量少得多,并且可以实现相似或更好的分类性能。一种引入更多随机性的新算法可以达到最佳效果,并且优于所有其他方法,尤其是在具有相对大量特征的数据集上。

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