An Improved K-means Clustering Algorithm for Multi-dimensional Multi-cluster data Using Meta-heuristics

Faisal Bin Ashraf, Abdul Matin, Md. Shafiur Raihan Shafi, Muhammad Usama Islam
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引用次数: 2

Abstract

k-means is the most widely used clustering algorithm which is an unsupervised technique that needs assumptions of centroids to begin the process. Hence, the problem is NP-hard and needs careful consideration and optimization to get a better quality of clusters of data. In this work, a meta-heuristic based genetic algorithm is proposed to optimize the centroid initialization process. The proposed method includes tournament selection, probability-based mutation, and elitism that leads to finding the optimal centroids for the clusters of a given dataset. Nine different and diversified datasets were used to test the performance of the proposed method in terms of the davies-bouldin index and it performed better in all the datasets than the standard k-means and minibatch k-means algorithm.
基于元启发式的多维多聚类数据改进k -均值聚类算法
K-means是使用最广泛的聚类算法,它是一种无监督技术,需要假设质心来开始聚类过程。因此,这个问题是np困难的,需要仔细考虑和优化,以获得更好质量的数据簇。本文提出了一种基于元启发式的遗传算法来优化质心初始化过程。提出的方法包括锦标赛选择、基于概率的突变和精英主义,精英主义导致找到给定数据集的簇的最佳质心。用9个不同的数据集测试了该方法在davies-bouldin指数方面的性能,结果表明该方法在所有数据集上的性能都优于标准k-means和minibatch k-means算法。
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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