作者
Sandro Cavallari, Erik Cambria, Hongyun Cai, Kevin Chen-Chuan Chang, Vincent W Zheng
发表日期
2019/7/16
期刊
IEEE computational intelligence magazine
卷号
14
期号
3
页码范围
39-50
出版商
IEEE
简介
In this paper, we introduce a new setting for graph embedding, which considers embedding communities instead of individual nodes. We find that community embedding is not only useful for community-level applications such as graph visualization but also provide an exciting opportunity to improve community detection and node classification. Specifically, we consider the interaction between community embedding and detection as a closed loop, through node embedding. On the one hand, node embedding can improve community detection since the detected communities are used to fit a community embedding. On the other hand, community embedding can be used to optimize node embedding by introducing a community-aware high-order proximity. However, in practice, the number of communities can be unknown beforehand; thus we extend our previous Community Embedding (ComE) model. We propose …
引用总数
2020202120222023202473918125
学术搜索中的文章
S Cavallari, E Cambria, H Cai, KCC Chang, VW Zheng - IEEE computational intelligence magazine, 2019