Community Detection in General Hypergraph via Graph Embedding
- URL: http://arxiv.org/abs/2103.15035v1
- Date: Sun, 28 Mar 2021 03:23:03 GMT
- Title: Community Detection in General Hypergraph via Graph Embedding
- Authors: Yaoming Zhen and Junhui Wang
- Abstract summary: We propose a novel method for detecting community structure in general hypergraph networks, uniform or non-uniform.
The proposed method introduces a null to augment a non-uniform hypergraph into a uniform multi-hypergraph, and then embeds the multi-hypergraph in a low-dimensional vector space.
- Score: 1.4213973379473654
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Network data has attracted tremendous attention in recent years, and most
conventional networks focus on pairwise interactions between two vertices.
However, real-life network data may display more complex structures, and
multi-way interactions among vertices arise naturally. In this article, we
propose a novel method for detecting community structure in general hypergraph
networks, uniform or non-uniform. The proposed method introduces a null vertex
to augment a non-uniform hypergraph into a uniform multi-hypergraph, and then
embeds the multi-hypergraph in a low-dimensional vector space such that
vertices within the same community are close to each other. The resultant
optimization task can be efficiently tackled by an alternative updating scheme.
The asymptotic consistencies of the proposed method are established in terms of
both community detection and hypergraph estimation, which are also supported by
numerical experiments on some synthetic and real-life hypergraph networks.
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