AILGJul 17, 2023

Autoregressive Diffusion Model for Graph Generation

Tsinghua
arXiv:2307.08849v1108 citationsh-index: 34
Originality Highly original
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This work addresses limitations in existing diffusion-based graph generative models, such as training difficulty and slow sampling, for applications in graph and molecule generation.

The authors tackled the problem of graph generation by proposing an autoregressive diffusion model that operates directly in discrete graph space, achieving better or comparable performance to state-of-the-art methods on six generic and two molecule datasets while enabling fast generation.

Diffusion-based graph generative models have recently obtained promising results for graph generation. However, existing diffusion-based graph generative models are mostly one-shot generative models that apply Gaussian diffusion in the dequantized adjacency matrix space. Such a strategy can suffer from difficulty in model training, slow sampling speed, and incapability of incorporating constraints. We propose an \emph{autoregressive diffusion} model for graph generation. Unlike existing methods, we define a node-absorbing diffusion process that operates directly in the discrete graph space. For forward diffusion, we design a \emph{diffusion ordering network}, which learns a data-dependent node absorbing ordering from graph topology. For reverse generation, we design a \emph{denoising network} that uses the reverse node ordering to efficiently reconstruct the graph by predicting the node type of the new node and its edges with previously denoised nodes at a time. Based on the permutation invariance of graph, we show that the two networks can be jointly trained by optimizing a simple lower bound of data likelihood. Our experiments on six diverse generic graph datasets and two molecule datasets show that our model achieves better or comparable generation performance with previous state-of-the-art, and meanwhile enjoys fast generation speed.

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