An Efficient Large Graph Clustering Technique based on Min-Hash 


Vol. 43,  No. 3, pp. 380-388, Mar.  2016


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  Abstract

Graph clustering is widely used to analyze a graph and identify the properties of a graph by generating clusters consisting of similar vertices. Recently, large graph data is generated in diverse applications such as Social Network Services (SNS), the World Wide Web (WWW), and telephone networks. Therefore, the importance of graph clustering algorithms that process large graph data efficiently becomes increased. In this paper, we propose an effective clustering algorithm which generates clusters for large graph data efficiently. Our proposed algorithm effectively estimates similarities between clusters in graph data using Min-Hash and constructs clusters according to the computed similarities. In our experiment with real-world data sets, we demonstrate the efficiency of our proposed algorithm by comparing with existing algorithms.


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  Cite this article

[IEEE Style]

S. Lee and J. Min, "An Efficient Large Graph Clustering Technique based on Min-Hash," Journal of KIISE, JOK, vol. 43, no. 3, pp. 380-388, 2016. DOI: .


[ACM Style]

Seok-Joo Lee and Jun-Ki Min. 2016. An Efficient Large Graph Clustering Technique based on Min-Hash. Journal of KIISE, JOK, 43, 3, (2016), 380-388. DOI: .


[KCI Style]

이석주, 민준기, "Min-Hash를 이용한 효율적인 대용량 그래프 클러스터링 기법," 한국정보과학회 논문지, 제43권, 제3호, 380~388쪽, 2016. DOI: .


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