AI RESEARCH
Sinkhorn Normalization of Diffusion Kernels
arXiv CS.CV
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ArXi:2507.06161v2 Announce Type: replace Smoothing a signal based on local neighborhoods is a core operation in machine learning and geometry processing. On well-structured domains such as vector spaces and manifolds, the Laplace operator derived from differential geometry offers a principled approach to smoothing via heat diffusion, with strong theoretical guarantees. However, constructing such Laplacians requires a carefully defined domain structure, which is not always available.