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Efficient structural clustering on probabilistic graphs

journal contribution
posted on 2019-10-01, 00:00 authored by Y Qiu, R Li, Jianxin LiJianxin Li, S Qiao, G Wang, J X Yu, R Mao
IEEE Structural clustering is a fundamental graph mining operator which is not only able to find densely-connected clusters, but it can also identify hub vertices and outliers in the graph. Previous structural clustering algorithms are tailored to deterministic graphs. Many real-world graphs, however, are not deterministic, but are probabilistic in nature because the existence of the edge is often inferred using a variety of statistical approaches. In this paper, we formulate the problem of structural clustering on probabilistic graphs, with the aim of finding reliable clusters in a given probabilistic graph. Unlike the traditional structural clustering problem, our problem relies mainly on a novel concept called reliable structural similarity which measures the probability of the similarity between two vertices in the probabilistic graph. We develop a dynamic programming algorithm with several powerful pruning strategies to efficiently compute the reliable structural similarities. With the reliable structural similarities, we adapt an existing solution framework to calculate the structural clustering on probabilistic graphs. Comprehensive experiments on five real-life datasets demonstrate the effectiveness and efficiency of the proposed approaches.

History

Journal

IEEE transactions on knowledge and data engineering

Volume

31

Issue

10

Pagination

1954 - 1968

Publisher

IEEE

Location

Piscataway, N.J.

ISSN

1041-4347

eISSN

1558-2191

Language

eng

Publication classification

C Journal article; C1 Refereed article in a scholarly journal

Copyright notice

2018, IEEE