Community detection in heterogeneous signed networks
By: Yuwen Wang , Shiwen Ye , Jingnan Zhang and more
Network data has attracted growing interest across scientific domains, prompting the development of various network models. Existing network analysis methods mainly focus on unsigned networks, whereas signed networks, consisting of both positive and negative edges, have been frequently encountered in practice but much less investigated. In this paper, we formally define strong and weak balance in signed networks, and propose a signed block $β$-model, which is capable of modeling strong- and weak-balanced signed networks simultaneously. We establish the identifiability of the proposed model by leveraging properties of bipartite graphs, and develop an efficient alternating updating algorithm to optimize the resulting log-likelihood function. More importantly, we establish the asymptotic consistencies of the proposed model in terms of both probability estimation and community detection. Its advantages are also demonstrated through extensive numerical experiments and the application to a real-world international relationship network.
Similar Papers
Assessing (im)balance in signed brain networks
Physics and Society
Finds hidden connections between things by watching them.
On Signed Network Coordination Games
CS and Game Theory
Helps groups agree or split apart predictably.
Multi-layer dissolution exponential-family models for weighted signed networks
Methodology
Maps how people agree or disagree strongly.