AI RESEARCH

Local Diffusion Models and Phases of Data Distributions

arXiv CS.LG

ArXi:2508.06614v2 Announce Type: replace As a class of generative artificial intelligence frameworks inspired by statistical physics, diffusion models have shown extraordinary performance in synthesizing complicated data distributions through a denoising process gradually guided by score functions. Real-life data, like images, is often spatially structured in low-dimensional spaces. However, ordinary diffusion models ignore this local structure and learn spatially global score functions, which are often computationally expensive.