vGraph: A Generative Model for Joint Community Detection and Node Representation Learning

Sun, Fan-Yun, Qu, Meng, Hoffmann, Jordan, Huang, Chin-Wei, Tang, Jian

Neural Information Processing Systems 

This paper focuses on two fundamental tasks of graph analysis: community detection and node representation learning, which capture the global and local structures of graphs respectively. In existing literature, these two tasks are usually independently studied while they are actually highly correlated. We propose a probabilistic generative model called vGraph to learn community membership and node representation collaboratively. Specifically, we assume that each node can be represented as a mixture of communities, and each community is defined as a multinomial distribution over nodes. Both the mixing coefficients and the community distribution are parameterized by the low-dimensional representations of the nodes and communities.