Abstract
AbstractThis work is devoted to a vast extension of Sanov’s theorem, in Laplace principle form, based on alternatives to the classical convex dual pair of relative entropy and cumulant generating functional. The abstract results give rise to a number of probabilistic limit theorems and asymptotics. For instance, widely applicable non-exponential large deviation upper bounds are derived for empirical distributions and averages of independent and identically distributed samples under minimal integrability assumptions, notably accommodating heavy-tailed distributions. Other interesting manifestations of the abstract results include new results on the rate of convergence of empirical measures in Wasserstein distance, uniform large deviation bounds, and variational problems involving optimal transport costs, as well as an application to error estimates for approximate solutions of stochastic optimization problems. The proofs build on the Dupuis–Ellis weak convergence approach to large deviations as well as the duality theory for convex risk measures.
Publisher
Cambridge University Press (CUP)
Subject
Applied Mathematics,Statistics and Probability
Reference55 articles.
1. Expected utility, penalty functions, and duality in stochastic nonlinear programming;Ben-Tal;Manag. Sci.,1986
2. On Cramér’s theorem for capacities;Hu;Comptes Rendus Mathématique,2010
3. Epi‐consistency of convex stochastic programs
4. [52] Villani, C. (2003). Topics in Optimal Transportation (Graduate Studies Math. 58). American Mathematical Society.
5. Cramer’s condition and Sanov’s theorem;Schied;Statist. Prob. Lett.,1998
Cited by
7 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献