Community detection for networks with unipartite and bipartite structure
Chang Chang, Chao Tang

TL;DR
This paper introduces a probabilistic model for detecting community structures in unipartite, bipartite, and mixture networks, unifying the analysis of these network types and demonstrating effectiveness on synthetic and real-world data.
Contribution
The paper presents a novel unified probabilistic framework for community detection across unipartite, bipartite, and mixture networks, extending existing models.
Findings
Model performs well on synthetic networks with overlapping and nonoverlapping communities.
Effective application to real-world bipartite and mixture networks.
Competitive with existing algorithms for unipartite and bipartite networks.
Abstract
Finding community structures in networks is important in network science, technology, and applications. To date, most algorithms that aim to find community structures only focus either on unipartite or bipartite networks. A unipartite network consists of one set of nodes and a bipartite network consists of two nonoverlapping sets of nodes with only links joining the nodes in different sets. However, a third type of network exists, defined here as the mixture network. Just like a bipartite network, a mixture network also consists of two sets of nodes, but some nodes may simultaneously belong to two sets, which breaks the nonoverlapping restriction of a bipartite network. The mixture network can be considered as a general case, with unipartite and bipartite networks viewed as its limiting cases. A mixture network can represent not only all the unipartite and bipartite networks, but also a…
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