AI RESEARCH

The Entropic Signature of Class Speciation in Diffusion Models

arXiv CS.LG

ArXi:2602.09651v2 Announce Type: replace-cross Diffusion models do not recover semantic structure uniformly over time. Instead, samples transition from semantic ambiguity to class commitment within a narrow regime. Recent theoretical work attributes this transition to dynamical instabilities along class-separating directions, but practical methods to detect and exploit these windows in trained models are still limited. We show that tracking the class-conditional entropy of a latent semantic variable given the noisy state provides a reliable signature of these transition regimes.