Stability and statistical inference for semidiscrete optimal transport maps

Ziv Goldfeld Co-Author
Cornell University
 
Kengo Kato Co-Author
Cornell University
 
Ritwik Sadhu First Author
Cornell University
 
Ritwik Sadhu Presenting Author
Cornell University
 
Tuesday, Aug 6: 3:20 PM - 3:35 PM
2587 
Contributed Papers 
Oregon Convention Center 
We study statistical inference for the optimal transport (OT) map (also known as the Brenier map) from a known absolutely continuous reference distribution onto an unknown finitely discrete target distribution. We derive limit distributions for the $L^p$-error with arbitrary $p \in [1,\infty)$ and for linear functionals of the empirical OT map, together with their moment convergence. The former has a non-Gaussian limit, whose explicit density is derived, while the latter attains asymptotic normality.
For both cases, we also establish consistency of the nonparametric bootstrap. The derivation of our limit theorems relies on new stability estimates of functionals of the OT map with respect to the dual potential vector, which may be of independent interest. We also discuss applications of our limit theorems to the construction of confidence sets for the OT map and inference for a maximum tail correlation.

Keywords

Bootstrap

functional delta method

Hadamard directional derivative

limit distribution

optimal transport map

semidiscrete optimal transport 

Main Sponsor

IMS