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A survey on nature inspired metaheuristic algorithms for partitional clustering

机译:基于自然启发的分区启发式元启发式算法研究

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摘要

The partitional clustering concept started with K-means algorithm which was published in 1957. Since then many classical partitional clustering algorithms have been reported based on gradient descent approach. The 1990 kick started a new era in cluster analysis with the application of nature inspired metaheuristics. After initial formulation nearly two decades have passed and researchers have developed numerous new algorithms in this field. This paper embodies an up-to-date review of all major nature inspired metaheuristic algorithms employed till date for partitional clustering. Further, key issues involved during formulation of various metaheuristics as a clustering problem and major application areas are discussed.
机译:分区聚类的概念始于1957年发布的K-means算法。自那时以来,已经报道了许多基于梯度下降方法的经典分区聚类算法。 1990年的踢球通过自然启发式元启发法的应用,开始了聚类分析的新纪元。经过最初的制定,已经过去了将近二十年,研究人员在该领域开发了许多新算法。本文体现了对迄今为止主要用于分区聚类的所有主要受自然启发的元启发式算法的最新综述。此外,讨论了在将各种元启发式方法作为聚类问题的过程中涉及的关键问题以及主要应用领域。

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