LGMLOct 2, 2019

Efficient Graph Generation with Graph Recurrent Attention Networks

arXiv:1910.00760v3404 citationsHas Code
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This addresses the challenge of scalable graph generation for applications in network analysis and synthetic data creation, representing a significant advancement over previous methods.

The paper tackles the problem of generating graphs efficiently and expressively by proposing Graph Recurrent Attention Networks (GRAN), which generate graphs in blocks using GNNs with attention to improve conditioning and reduce bottlenecks, achieving state-of-the-art time efficiency and sample quality on benchmarks and scaling to generate large graphs of up to 5K nodes.

We propose a new family of efficient and expressive deep generative models of graphs, called Graph Recurrent Attention Networks (GRANs). Our model generates graphs one block of nodes and associated edges at a time. The block size and sampling stride allow us to trade off sample quality for efficiency. Compared to previous RNN-based graph generative models, our framework better captures the auto-regressive conditioning between the already-generated and to-be-generated parts of the graph using Graph Neural Networks (GNNs) with attention. This not only reduces the dependency on node ordering but also bypasses the long-term bottleneck caused by the sequential nature of RNNs. Moreover, we parameterize the output distribution per block using a mixture of Bernoulli, which captures the correlations among generated edges within the block. Finally, we propose to handle node orderings in generation by marginalizing over a family of canonical orderings. On standard benchmarks, we achieve state-of-the-art time efficiency and sample quality compared to previous models. Additionally, we show our model is capable of generating large graphs of up to 5K nodes with good quality. To the best of our knowledge, GRAN is the first deep graph generative model that can scale to this size. Our code is released at: https://github.com/lrjconan/GRAN.

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