Feature selection with harmony search.

Ren Diao, Qiang Shen
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引用次数: 165

Abstract

Many search strategies have been exploited for the task of feature selection (FS), in an effort to identify more compact and better quality subsets. Such work typically involves the use of greedy hill climbing (HC), or nature-inspired heuristics, in order to discover the optimal solution without going through exhaustive search. In this paper, a novel FS approach based on harmony search (HS) is presented. It is a general approach that can be used in conjunction with many subset evaluation techniques. The simplicity of HS is exploited to reduce the overall complexity of the search process. The proposed approach is able to escape from local solutions and identify multiple solutions owing to the stochastic nature of HS. Additional parameter control schemes are introduced to reduce the effort and impact of parameter configuration. These can be further combined with the iterative refinement strategy, tailored to enforce the discovery of quality subsets. The resulting approach is compared with those that rely on HC, genetic algorithms, and particle swarm optimization, accompanied by in-depth studies of the suggested improvements.

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特征选择与和谐搜索。
许多搜索策略已经被用于特征选择(FS)任务,以努力识别更紧凑和更好质量的子集。这样的工作通常涉及到使用贪婪爬坡(HC),或者自然启发的启发式,以便在不经过穷举搜索的情况下发现最佳解决方案。本文提出了一种基于和谐搜索(HS)的FS方法。它是一种通用的方法,可以与许多子集评估技术结合使用。HS的简单性被用来降低搜索过程的整体复杂性。由于HS的随机特性,所提出的方法能够摆脱局部解并识别多个解。引入了额外的参数控制方案,以减少参数配置的工作量和影响。这些可以进一步与迭代细化策略相结合,以强制发现质量子集。将所得方法与基于HC、遗传算法和粒子群优化的方法进行了比较,并对所建议的改进进行了深入研究。
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