Flow Matching from Viewpoint of Proximal Operators

arXiv stat.ML / 3/24/2026

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Key Points

  • The paper reformulates Optimal Transport Conditional Flow Matching (OT-CFM) as an exact proximal problem using an extended Brenier potential, removing the need for the target distribution to have a density.
  • It shows that recovering target points is given exactly by a proximal operator, yielding an explicit proximal expression for the OT-CFM vector field.
  • The authors analyze convergence of minibatch OT-CFM to the population-level formulation as batch size increases.
  • For manifold-supported targets, they prove that OT-CFM is terminally normally hyperbolic: after time rescaling, the dynamics contracts exponentially in normal directions to the data manifold while staying neutral along tangential directions.

Abstract

We reformulate Optimal Transport Conditional Flow Matching (OT-CFM), a class of dynamical generative models, showing that it admits an exact proximal formulation via an extended Brenier potential, without assuming that the target distribution has a density. In particular, the mapping to recover the target point is exactly given by a proximal operator, which yields an explicit proximal expression of the vector field. We also discuss the convergence of minibatch OT-CFM to the population formulation as the batch size increases. Finally, using second epi-derivatives of convex potentials, we prove that, for manifold-supported targets, OT-CFM is terminally normally hyperbolic: after time rescaling, the dynamics contracts exponentially in directions normal to the data manifold while remaining neutral along tangential directions.