Feb. 1, 2024, 12:46 p.m. | Esteban Vargas Bernal Mason A. Porter Joseph H. Tien

cs.LG updates on arXiv.org arxiv.org

InfoMap is a popular approach to detect densely connected "communities" of nodes in networks. To detect such communities, InfoMap uses random walks and ideas from information theory. Motivated by the dynamics of disease spread on networks, whose nodes can have heterogeneous disease-removal rates, we adapt InfoMap to absorbing random walks. To do this, we use absorption-scaled graphs (in which edge weights are scaled according to absorption rates) and Markov time sweeping. One of our adaptations of InfoMap converges to the …

adapt communities cs.lg cs.si disease disease spread dynamics graphs ideas information math.pr networks physics.soc-ph popular random theory

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