MLLGOCNov 11, 2024

Conditional simulation via entropic optimal transport: Toward non-parametric estimation of conditional Brenier maps

arXiv:2411.07154v111 citationsh-index: 15
Originality Incremental advance
AI Analysis

This addresses the challenge of generating samples from conditional distributions in statistical modeling, which is incremental as it builds on existing optimal transport theory.

The paper tackles the problem of conditional simulation by proposing a non-parametric estimator for conditional Brenier maps using entropic optimal transport, and it demonstrates performance on benchmark datasets and Bayesian inference problems.

Conditional simulation is a fundamental task in statistical modeling: Generate samples from the conditionals given finitely many data points from a joint distribution. One promising approach is to construct conditional Brenier maps, where the components of the map pushforward a reference distribution to conditionals of the target. While many estimators exist, few, if any, come with statistical or algorithmic guarantees. To this end, we propose a non-parametric estimator for conditional Brenier maps based on the computational scalability of \emph{entropic} optimal transport. Our estimator leverages a result of Carlier et al. (2010), which shows that optimal transport maps under a rescaled quadratic cost asymptotically converge to conditional Brenier maps; our estimator is precisely the entropic analogues of these converging maps. We provide heuristic justifications for choosing the scaling parameter in the cost as a function of the number of samples by fully characterizing the Gaussian setting. We conclude by comparing the performance of the estimator to other machine learning and non-parametric approaches on benchmark datasets and Bayesian inference problems.

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