A hybrid algorithm for k-medoid clustering of large data sets

Weiguo Sheng, Xiaohui Liu
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引用次数: 45

Abstract

In this paper, we propose a novel local search heuristic and then hybridize it with a genetic algorithm for k-medoid clustering of large data sets, which is an NP-hard optimization problem. The local search heuristic selects k-medoids from the data set and tries to efficiently minimize the total dissimilarity within each cluster. In order to deal with the local optimality, the local search heuristic is hybridized with a genetic algorithm and then the Hybrid K-medoid Algorithm (HKA) is proposed. Our experiments show that, compared with previous genetic algorithm based k-medoid clustering approaches - GCA and RAR/sub w/GA, HKA can provide better clustering solutions and do so more efficiently. Experiments use two gene expression data sets, which may involve large noise components.
大数据集k-媒质聚类的混合算法
本文提出了一种新的局部搜索启发式算法,并将其与遗传算法相结合,用于大数据集的k- medium聚类,这是一个np难优化问题。局部搜索启发式算法从数据集中选择k个介质,并尝试有效地最小化每个簇内的总不相似度。为了解决局部最优问题,将局部搜索启发式算法与遗传算法相结合,提出了混合k -媒质算法(HKA)。实验表明,与以往基于遗传算法的k- medium聚类方法(GCA和RAR/sub w/GA)相比,HKA可以提供更好的聚类解,并且聚类效率更高。实验使用两个基因表达数据集,其中可能包含大量噪声成分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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