The Score Hamiltonian: Mapping Diffusion Models to Adiabatic Transport
classification
🧮 math-ph
cs.AIcs.LGmath.MPphysics.data-an
keywords
scoreadiabaticdensitydiffusionhamiltonianmodelssamplingtransport
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We exhibit an exact correspondence between sampling with score-based diffusion models and adiabatic transport of ground states for a family of Schr\"odinger operators we call Score Hamiltonians, built from the learned score's quantum potential. We obtain novel density reconstruction bounds and principled annealing schedules via adiabatic theorems for Fokker-Planck equations with time-varying potentials. We find the fundamental limit of sampling is set by the ratio of squared score-matching error to Score Hamiltonian spectral gap - the inverse Poincar\'e constant of the data density.
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