Statistics of Robust Optimization: A Generalized Empirical Likelihood Approach
成果类型:
Article
署名作者:
Duchi, John C.; Glynn, Peter W.; Namkoong, Hongseok
署名单位:
Stanford University; Stanford University; Columbia University
刊物名称:
MATHEMATICS OF OPERATIONS RESEARCH
ISSN/ISSBN:
0364-765X
DOI:
10.1287/moor.2020.1085
发表日期:
2021
页码:
946-969
关键词:
stochastic-approximation
asymptotic-behavior
inference
CONVERGENCE
uncertainty
sensitivity
estimators
摘要:
We study statistical inference and distributionally robust solution methods for stochastic optimization problems, focusing on confidence intervals for optimal values and solutions that achieve exact coverage asymptotically. We develop a generalized empirical likelihood framework-based on distributional uncertainty sets constructed from nonparametric f-divergence balls-for Hadamard differentiable functionals, and in particular, stochastic optimization problems. As consequences of this theory, we provide a principled method for choosing the size of distributional uncertainty regions to provide one- and two-sided confidence intervals that achieve exact coverage. We also give an asymptotic expansion for our distributionally robust formulation, showing how robustification regularizes problems by their variance. Finally, we show that optimizers of the distributionally robust formulations we study enjoy (essentially) the same consistency properties as those in classical sample average approximations. Our general approach applies to quickly mixing stationary sequences, including geometrically ergodic Harris recurrent Markov chains.