An Improved K-Means Algorithm Based on Contour Similarity

Author:

Zhao Jing1ORCID,Bao Yanke2,Li Dongsheng1,Guan Xinguo1

Affiliation:

1. Key Laboratory of Industrial Automation and Machine Vision of Qiannan, School of Mathematics and Statistics, Qiannan Normal University for Nationalities, Duyun 558000, China

2. College of Science, Liaoning Technical University, Fuxin 123000, China

Abstract

The traditional k-means algorithm is widely used in large-scale data clustering because of its easy implementation and efficient process, but it also suffers from the disadvantages of local optimality and poor robustness. In this study, a Csk-means algorithm based on contour similarity is proposed to overcome the drawbacks of the traditional k-means algorithm. For the traditional k-means algorithm, which results in local optimality due to the influence of outliers or noisy data and random selection of the initial clustering centers, the Csk-means algorithm overcomes both drawbacks by combining data lattice transformation and dissimilar interpolation. In particular, the Csk-means algorithm employs Fisher optimal partitioning of the similarity vectors between samples for the process of determining the number of clusters. To improve the robustness of the k-means algorithm to the shape of the clusters, the Csk-means algorithm utilizes contour similarity to compute the similarity between samples during the clustering process. Experimental results show that the Csk-means algorithm provides better clustering results than the traditional k-means algorithm and other comparative algorithms.

Funder

Project for Growing Youth Talents of the Department of education of Guizhou Province

Foundation Project for Talents of Qiannan Science and Technology Cooperation Platform Supported by the Department of Science and Technology, Guizhou

Guizhou Provincial Department of Education 2024 Humanities and Social Sciences Research Program for Colleges and Universities

Publisher

MDPI AG

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