An Eulerian Perspective on Straight-Line Sampling
By: Panos Tsimpos, Youssef Marzouk
Potential Business Impact:
Makes computer art creation faster and simpler.
We study dynamic measure transport for generative modeling: specifically, flows induced by stochastic processes that bridge a specified source and target distribution. The conditional expectation of the process' velocity defines an ODE whose flow map achieves the desired transport. We ask \emph{which processes produce straight-line flows} -- i.e., flows whose pointwise acceleration vanishes and thus are exactly integrable with a first-order method? We provide a concise PDE characterization of straightness as a balance between conditional acceleration and the divergence of a weighted covariance (Reynolds) tensor. Using this lens, we fully characterize affine-in-time interpolants and show that straightness occurs exactly under deterministic endpoint couplings. We also derive necessary conditions that constrain flow geometry for general processes, offering broad guidance for designing transports that are easier to integrate.
Similar Papers
Y-shaped Generative Flows
Machine Learning (CS)
Helps AI learn patterns by moving data together.
Generative Modeling with Continuous Flows: Sample Complexity of Flow Matching
Machine Learning (CS)
Makes AI create better pictures with less data.
Distribution estimation via Flow Matching with Lipschitz guarantees
Machine Learning (Stat)
Makes AI learn faster and better.