Community Detection on Networks with Ricci Flow

July 09, 2019 Β· Declared Dead Β· πŸ› Scientific Reports

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Authors Chien-Chun Ni, Yu-Yao Lin, Feng Luo, Jie Gao arXiv ID 1907.03993 Category cs.SI: Social & Info Networks Cross-listed physics.soc-ph Citations 178 Venue Scientific Reports Last Checked 4 months ago
Abstract
Many complex networks in the real world have community structures -- groups of well-connected nodes with important functional roles. It has been well recognized that the identification of communities bears numerous practical applications. While existing approaches mainly apply statistical or graph theoretical/combinatorial methods for community detection, in this paper, we present a novel geometric approach which enables us to borrow powerful classical geometric methods and properties. By considering networks as geometric objects and communities in a network as a geometric decomposition, we apply curvature and discrete Ricci flow, which have been used to decompose smooth manifolds with astonishing successes in mathematics, to break down communities in networks. We tested our method on networks with ground-truth community structures, and experimentally confirmed the effectiveness of this geometric approach.
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