Litcius/Paper detail

MEGA

Joyce Jiyoung Whang, Rundong Du, Sangwon Jung, Geon Lee, Barry Drake, Qingqing Liu, Seonggoo Kang, Haesun Park

2020Proceedings of the VLDB Endowment33 citationsDOI

Abstract

Complex relationships among entities can be modeled very effectively using hypergraphs. Hypergraphs model real-world data by allowing a hyperedge to include two or more entities. Clustering of hypergraphs enables us to group the similar entities together. While most existing algorithms solely consider the connection structure of a hypergraph to solve the clustering problem, we can boost the clustering performance by considering various features associated with the entities as well as auxiliary relationships among the entities. Also, we can further improve the clustering performance if some of the labels are known and we incorporate them into a clustering model. In this paper, we propose a semi-supervised clustering framework for hypergraphs that is able to easily incorporate not only multiple relationships among the entities but also multiple attributes and content of the entities from diverse sources. Furthermore, by showing the close relationship between the hypergraph normalized cut and the weighted kernel K-Means, we also develop an efficient multilevel hypergraph clustering method which provides a good initialization with our semi-supervised multi-view clustering algorithm. Experimental results show that our algorithm is effective in detecting the ground-truth clusters and significantly outperforms other state-of-the-art methods.

Topics & Concepts

HypergraphCluster analysisComputer scienceInitializationCorrelation clusteringData miningKernel (algebra)CURE data clustering algorithmArtificial intelligenceTheoretical computer sciencePattern recognition (psychology)MathematicsCombinatoricsProgramming languageAdvanced Clustering Algorithms ResearchComplex Network Analysis TechniquesData Management and Algorithms
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