Affiliation:
1. University of New South Wales, Australia
2. The University of Sydney, Australia
Abstract
Community search over large graphs is a fundamental problem in graph analysis. Recent studies propose to compute top-
k
influential communities, where each reported community not only is a cohesive subgraph but also has a high influence value. The existing approaches to the problem of top-
k
influential community search can be categorized as index-based algorithms and online search algorithms without indexes. The index-based algorithms, although being very efficient in conducting community searches, need to pre-compute a special-purpose index and only work for one built-in vertex weight vector. In this paper, we investigate online search approaches and propose an
instance-optimal
algorithm LocalSearch whose time complexity is linearly proportional to the size of the smallest subgraph that a correct algorithm needs to access without indexes. In addition, we also propose techniques to make LocalSearch
progressively
compute and report the communities in decreasing influence value order such that
k
does not need to be specified. Moreover, we extend our framework to the general case of top-
k
influential community search regarding other cohesiveness measures. Extensive empirical studies on real graphs demonstrate that our algorithms outperform the existing online search algorithms by several orders of magnitude.
Subject
General Earth and Planetary Sciences,Water Science and Technology,Geography, Planning and Development
Cited by
46 articles.
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