首页> 外文期刊>Fuzzy Optimization and Decision Making: A Journal of Modeling and Computation Under Uncertainty >Genetic algorithm-tuned entropy-based fuzzy C-means algorithm for obtaining distinct and compact clusters
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Genetic algorithm-tuned entropy-based fuzzy C-means algorithm for obtaining distinct and compact clusters

机译:基于遗传算法的基于熵的模糊C均值算法,用于获得清晰紧凑的簇

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摘要

A modified approach had been developed in this study by combining two well-known algorithms of clustering, namely fuzzy c-means algorithm and entropy-based algorithm. Fuzzy c-means algorithm is one of the most popular algorithms for fuzzy clustering. It could yield compact clusters but might not be able to generate distinct clusters. On the other hand, entropy-based algorithm could obtain distinct clusters, which might not be compact. However, the clusters need to be both distinct as well as compact. The present paper proposes a modified approach of clustering by combining the above two algorithms. A genetic algorithm was utilized for tuning of all three clustering algorithms separately. The proposed approach was found to yield both distinct as well as compact clusters on two data sets.
机译:通过结合两种著名的聚类算法,即模糊c均值算法和基于熵的算法,在本研究中提出了一种改进的方法。模糊c均值算法是最流行的模糊聚类算法之一。它可以产生紧凑的群集,但可能无法生成不同的群集。另一方面,基于熵的算法可以获得不那么紧凑的聚类。但是,集群既要独特又要紧凑。通过结合以上两种算法,提出了一种改进的聚类方法。利用遗传算法分别调整所有三个聚类算法。发现所提出的方法可以在两个数据集上产生截然不同的簇和紧凑的簇。

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