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Autori principali: Gao, Tianchen, Liu, Jingyuan, Pan, Rui, Sun, Ao
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2503.06889
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author Gao, Tianchen
Liu, Jingyuan
Pan, Rui
Sun, Ao
author_facet Gao, Tianchen
Liu, Jingyuan
Pan, Rui
Sun, Ao
contents Community detection, which focuses on recovering the group structure within networks, is a crucial and fundamental task in network analysis. However, the detection process can be quite challenging and unstable when community signals are weak. Motivated by a newly collected large-scale academic network dataset from the Web of Science, which includes multi-layer network information, we propose a Bipartite Assisted Spectral-clustering approach for Identifying Communities (BASIC), which incorporates the bipartite network information into the community structure learning of the primary network. The accuracy and stability enhancement of BASIC is validated theoretically on the basis of the degree-corrected stochastic block model framework, as well as numerically through extensive simulation studies. We rigorously study the convergence rate of BASIC even under weak signal scenarios and prove that BASIC yields a tighter upper error bound than that based on the primary network information alone. We utilize the proposed BASIC method to analyze the newly collected large-scale academic network dataset from statistical papers. During the author collaboration network structure learning, we incorporate the bipartite network information from author-paper, author-institution, and author-region relationships. From both statistical and interpretative perspectives, these bipartite networks greatly aid in identifying communities within the primary collaboration network.
format Preprint
id arxiv_https___arxiv_org_abs_2503_06889
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle BASIC: Bipartite Assisted Spectral-clustering for Identifying Communities in Large-scale Networks
Gao, Tianchen
Liu, Jingyuan
Pan, Rui
Sun, Ao
Statistics Theory
Community detection, which focuses on recovering the group structure within networks, is a crucial and fundamental task in network analysis. However, the detection process can be quite challenging and unstable when community signals are weak. Motivated by a newly collected large-scale academic network dataset from the Web of Science, which includes multi-layer network information, we propose a Bipartite Assisted Spectral-clustering approach for Identifying Communities (BASIC), which incorporates the bipartite network information into the community structure learning of the primary network. The accuracy and stability enhancement of BASIC is validated theoretically on the basis of the degree-corrected stochastic block model framework, as well as numerically through extensive simulation studies. We rigorously study the convergence rate of BASIC even under weak signal scenarios and prove that BASIC yields a tighter upper error bound than that based on the primary network information alone. We utilize the proposed BASIC method to analyze the newly collected large-scale academic network dataset from statistical papers. During the author collaboration network structure learning, we incorporate the bipartite network information from author-paper, author-institution, and author-region relationships. From both statistical and interpretative perspectives, these bipartite networks greatly aid in identifying communities within the primary collaboration network.
title BASIC: Bipartite Assisted Spectral-clustering for Identifying Communities in Large-scale Networks
topic Statistics Theory
url https://arxiv.org/abs/2503.06889