Authors
Sandro Cavallari, Vincent W. Zheng, Hongyun Cai, Kevin C.-C. Chang, Erik Cambria
Publication date
2017
Conference
The 26th ACM International Conference on Information and Knowledge Management (CIKM)
Description
In this paper, we study an important yet largely under-explored setting of graph embedding, i.e., embedding communities instead of each individual nodes. We find that community embedding is not only useful for community-level applications such as graph visualization, but also beneficial to both community detection and node classification. To learn such embedding, our insight hinges upon a closed loop among community embedding, community detection and node embedding. On the one hand, node embedding can help improve community detection, which outputs good communities for fitting better community embedding. On the other hand, community embedding can be used to optimize the node embedding by introducing a community-aware high-order proximity. Guided by this insight, we propose a novel community embedding framework that jointly solves the three tasks together. We evaluate such a …
Total citations
201820192020202120222023202441638784645628
Scholar articles
S Cavallari, VW Zheng, H Cai, KCC Chang, E Cambria - Proceedings of the 2017 ACM on Conference on …, 2017