Feb. 7, 2024, 5:42 a.m. | Lingxiao Zhao Xueying Ding Leman Akoglu

cs.LG updates on arXiv.org arxiv.org

Graph generation has been dominated by autoregressive models due to their simplicity and effectiveness, despite their sensitivity to ordering. Yet diffusion models have garnered increasing attention, as they offer comparable performance while being permutation-invariant. Current graph diffusion models generate graphs in a one-shot fashion, but they require extra features and thousands of denoising steps to achieve optimal performance. We introduce PARD, a Permutation-invariant Auto Regressive Diffusion model that integrates diffusion models with autoregressive methods. PARD harnesses the effectiveness and efficiency …

attention autoregressive models cs.lg current denoising diffusion diffusion models extra fashion features generate graph graphs performance sensitivity simplicity stat.ml

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