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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Memetic differential evolution methods for clustering problems
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Memetic differential evolution methods for clustering problems

机译:聚类问题的膜差分演化方法

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摘要

The Euclidean Minimum Sum-of-Squares Clustering ( MSSC ) is one of the most important models for the clustering problem. Due to its NP-hardness, the problem continues to receive much attention in the scientific literature and several heuristic procedures have been proposed. Recent research has been devoted to the improvement of the classical K-MEANS algorithm, either by suitably selecting its starting configuration or by using it as a local search method within a global optimization algorithm. This paper follows this last approach by proposing a new implementation of a Memetic Differential Evolution ( MDE ) algorithm specifically designed for the MSSC problem and based on the repeated execution of K-MEANS from selected configurations. In this paper we describe how to adapt MDE to the clustering problem and we show, through a vast set of numerical experiments, that the proposed method has very good quality, measured in terms of the minimization of the objective function, as well as a very good efficiency, measured in the number of calls to the local optimization routine, with respect to state of the art methods.
机译:欧几里德最小平方和聚类(MSSC)是聚类问题中最重要的模型之一。由于其NP难度,该问题在科学文献中继续受到关注,并提出了若干启发式程序。最近的研究致力于改进经典的K-MEANS算法,或者通过适当地选择其起始配置,或者将其用作全局优化算法中的局部搜索方法。本文遵循这最后一种方法,提出了一种专为MSSC问题设计的模因差分进化(MDE)算法的新实现,该算法基于从选定配置中重复执行K-均值。在本文中,我们描述了如何使MDE适应聚类问题,并通过大量的数值实验表明,所提出的方法具有非常好的质量,以目标函数的最小化来衡量,以及非常好的效率,以调用局部优化例程的次数来衡量,与最先进的方法相比。

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