Tobias Bernecker, Ghalia Rehawi, Francesco Paolo Casale, Janine Knauer-Arloth, Annalisa Marsico
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引用次数: 0
摘要
图形生成解决的问题是生成数据分布与现实世界图形相似的新图形。虽然之前基于扩散的图生成方法已经取得了可喜的成果,但它们往往难以扩展到大型图。在这项工作中,我们提出了 ARROW-Diff(AutoRegressiveRandOm Walk Diffusion,自动回归随机漫步扩散),这是一种基于随机漫步的新型扩散方法,可用于高效的大规模图生成。我们的方法包括随机漫步采样和图剪枝迭代过程中的两个部分。我们证明,ARROW-Diff 可以高效地扩展到大型图,在生成时间和多个图统计方面都超过了其他基线方法,反映出生成图的高质量。
Random Walk Diffusion for Efficient Large-Scale Graph Generation
Graph generation addresses the problem of generating new graphs that have a
data distribution similar to real-world graphs. While previous diffusion-based
graph generation methods have shown promising results, they often struggle to
scale to large graphs. In this work, we propose ARROW-Diff (AutoRegressive
RandOm Walk Diffusion), a novel random walk-based diffusion approach for
efficient large-scale graph generation. Our method encompasses two components
in an iterative process of random walk sampling and graph pruning. We
demonstrate that ARROW-Diff can scale to large graphs efficiently, surpassing
other baseline methods in terms of both generation time and multiple graph
statistics, reflecting the high quality of the generated graphs.