Community and hyperedge inference in multiple hypergraphs
Li Ni, Ziqi Deng, Lin Mu, Lei Zhang, Wenjian Luo, Yiwen Zhang

TL;DR
This paper introduces a stochastic block model-based approach for analyzing multiple hypergraphs, enabling community detection, hyperedge prediction, and inter-hypergraph edge inference to better understand complex high-order systems.
Contribution
It presents a novel model that integrates multiple hypergraphs to uncover latent structures and analyze high-order interactions in real-world biological and social systems.
Findings
Strong performance in community detection
Effective hyperedge prediction capabilities
Successful inference of inter-hypergraph edges
Abstract
Hypergraphs, capable of representing high-order interactions via hyperedges, have become a powerful tool for modeling real-world biological and social systems. Inherent relationships within these real-world systems, such as the encoding relationship between genes and their protein products, drive the establishment of interconnections between multiple hypergraphs. Here, we demonstrate how to utilize those interconnections between multiple hypergraphs to synthesize integrated information from multiple higher-order systems, thereby enhancing understanding of underlying structures. We propose a model based on the stochastic block model, which integrates information from multiple hypergraphs to reveal latent high-order structures. Real-world hyperedges exhibit preferential attachment, where certain nodes dominate hyperedge formation. To characterize this phenomenon, our model introduces…
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Taxonomy
TopicsBioinformatics and Genomic Networks · Complex Network Analysis Techniques · Advanced Graph Neural Networks
