Leveraging disjoint communities for detecting overlapping community structure
Tanmoy Chakraborty

TL;DR
This paper introduces PVOC, a framework that enhances existing disjoint community detection algorithms to accurately identify overlapping communities in networks, simplifying the process without creating new algorithms.
Contribution
The paper proposes a novel post-processing technique using the permanence metric to detect overlapping communities from disjoint community structures, outperforming existing methods.
Findings
PVOC outperforms six state-of-the-art algorithms in accuracy.
The approach effectively detects meaningful overlapping communities.
Experimental results on synthetic and real networks validate its effectiveness.
Abstract
Network communities represent mesoscopic structure for understanding the organization of real-world networks, where nodes often belong to multiple communities and form overlapping community structure in the network. Due to non-triviality in finding the exact boundary of such overlapping communities, this problem has become challenging, and therefore huge effort has been devoted to detect overlapping communities from the network. In this paper, we present PVOC (Permanence based Vertex-replication algorithm for Overlapping Community detection), a two-stage framework to detect overlapping community structure. We build on a novel observation that non-overlapping community structure detected by a standard disjoint community detection algorithm from a network has high resemblance with its actual overlapping community structure, except the overlapping part. Based on this observation, we…
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