Sensitivity analysis of Wasserstein distributionally robust optimization problems

Proc Math Phys Eng Sci. 2021 Dec;477(2256):20210176. doi: 10.1098/rspa.2021.0176. Epub 2021 Dec 15.

Abstract

We consider sensitivity of a generic stochastic optimization problem to model uncertainty. We take a non-parametric approach and capture model uncertainty using Wasserstein balls around the postulated model. We provide explicit formulae for the first-order correction to both the value function and the optimizer and further extend our results to optimization under linear constraints. We present applications to statistics, machine learning, mathematical finance and uncertainty quantification. In particular, we provide an explicit first-order approximation for square-root LASSO regression coefficients and deduce coefficient shrinkage compared to the ordinary least-squares regression. We consider robustness of call option pricing and deduce a new Black-Scholes sensitivity, a non-parametric version of the so-called Vega. We also compute sensitivities of optimized certainty equivalents in finance and propose measures to quantify robustness of neural networks to adversarial examples.

Keywords: Wasserstein metric; non-parametric uncertainty; robust stochastic optimization; sensitivity analysis; uncertainty quantification.

Associated data

  • figshare/10.6084/m9.figshare.c.5730987