Published September 4, 2024 | Published
Journal Article

An approximation theory framework for measure-transport sampling algorithms

  • 1. ROR icon California Institute of Technology
  • 2. ROR icon University of Washington
  • 3. ROR icon Nvidia (United States)
  • 4. ROR icon Massachusetts Institute of Technology
  • 5. ROR icon Technion – Israel Institute of Technology

Abstract

This article presents a general approximation-theoretic framework to analyze measure transport algorithms for probabilistic modeling. A primary motivating application for such algorithms is sampling—a central task in statistical inference and generative modeling. We provide a priori error estimates in the continuum limit, i.e., when the measures (or their densities) are given, but when the transport map is discretized or approximated using a finite-dimensional function space. Our analysis relies on the regularity theory of transport maps and on classical approximation theory for high-dimensional functions. A third element of our analysis, which is of independent interest, is the development of new stability estimates that relate the distance between two maps to the distance (or divergence) between the pushforward measures they define. We present a series of applications of our framework, where quantitative convergence rates are obtained for practical problems using Wasserstein metrics, maximum mean discrepancy, and Kullback–Leibler divergence. Specialized rates for approximations of the popular triangular Knöthe–Rosenblatt maps are obtained, followed by numerical experiments that demonstrate and extend our theory.

Copyright and License

© 2024 American Mathematical Society.

Funding

The first author and the fourth author were supported from the United States Department of Energy M2dt MMICC center under award DE-SC0023187. The second author was supported by the National Science Foundation grant DMS-208535. The first author and the second author were supported from Air Force Office of Scientific Research under MURI award number FA9550-20-1-0358. The fifth author was supported in part by Simons Foundation Math + X Investigator Award #376319 (Michael I. Weinstein), the Binational Science Foundation grant #2022254, and the AMS-Simons Travel Grant.

Additional details

Created:
April 15, 2025
Modified:
April 15, 2025