Graph Embedding VAE: A Permutation Invariant Model of Graph Structure
NeurIPS 2019 Workshop on Graph Representation Learning
Graph Embedding VAE: A Permutation
Invariant Model of Graph Structure
Tony Duan and Juho Lee
Generative models of graph structure have applications in biology and social sciences. The state of the art is GraphRNN, which decomposes the graph generation process into a series of sequential steps. While effective for modest sizes, it loses its permutation invariance for larger graphs. Instead, we present a permutation invariant latent-variable generative model relying on graph embeddings to encode structure. Using tools from the random graph literature, our model is highly scalable to large graphs with likelihood evaluation and generation in O(|V| + |E|).


