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Score-based Generative Neural Networks for Large-Scale Optimal Transport

About

We consider the fundamental problem of sampling the optimal transport coupling between given source and target distributions. In certain cases, the optimal transport plan takes the form of a one-to-one mapping from the source support to the target support, but learning or even approximating such a map is computationally challenging for large and high-dimensional datasets due to the high cost of linear programming routines and an intrinsic curse of dimensionality. We study instead the Sinkhorn problem, a regularized form of optimal transport whose solutions are couplings between the source and the target distribution. We introduce a novel framework for learning the Sinkhorn coupling between two distributions in the form of a score-based generative model. Conditioned on source data, our procedure iterates Langevin Dynamics to sample target data according to the regularized optimal coupling. Key to this approach is a neural network parametrization of the Sinkhorn problem, and we prove convergence of gradient descent with respect to network parameters in this formulation. We demonstrate its empirical success on a variety of large scale optimal transport tasks.

Mara Daniels, Tyler Maunu, Paul Hand• 2021

Related benchmarks

TaskDatasetResultRank
Target Distribution FittingHigh-dimensional Gaussian
BW2^2-UVP174
28
Super-ResolutionCelebA
FID25.59
24
IdentityCelebA
FID25.51
14
EOT plan recoveryGaussian Dim 2
BW2-UVP92
7
EOT plan recoveryGaussian Dim 64
BW2-UVP462
7
EOT plan recoveryGaussian Dim 128
BW2-UVP533
7
EOT plan recoveryGaussian Dim 16
BW2-UVP136
7
Marginal Distribution Recovery16D Gaussian (test)
BW2-UVP (t=0)0.00e+0
7
Unpaired Super-ResolutionCelebA faces (test)
FID18.88
6
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