In “Two-Stage Sample Robust Optimization,” Bertsimas, Shtern, and Sturt investigate a simple approximation scheme, based on overlapping linear decision rules, for solving data-driven two-stage distributionally robust optimization problems with the type-infinity Wasserstein ambiguity set. Their main result establishes that this approximation scheme is asymptotically optimal for two-stage stochastic linear optimization problems; that is, under mild assumptions, the optimal cost and optimal first-stage decisions obtained by approximating the robust optimization problem converge to those of the underlying stochastic problem as the number of data points grows to infinity. These guarantees notably apply to two-stage stochastic problems that do n...
We consider distributionally robust two-stage stochastic convex programming problems, in which the r...
Many decision problems in science, engineering and economics are affected by uncertain parameters wh...
Affine policies are widely used as a solution approach in dynamic optimization where computing an op...
An important and challenging class of two-stage linear optimization problems are those without relat...
Stochastic optimization, especially multistage models, is well known to be computationally excruciat...
Multi-stage linear optimization is an integral modeling paradigm in supply chain, energy planning, a...
Discrete approximation of probability distributions is an important topic in stochastic programming....
We propose a tractable approximation scheme for convex (not necessarily linear) multi-stage robust o...
Stochastic optimization, especially multistage models, is well known to be computationally excruciat...
Linear stochastic programming provides a flexible toolbox for analyzing real-life decision situation...
We propose a Bayesian framework for assessing the relative strengths of data-driven ambiguity sets i...
Distributionally robust optimization (DRO) is a modeling framework in decision making under uncertai...
Two-stage stochastic optimization is a widely used framework for modeling uncertainty, where we have...
This paper considers distributionally robust formulations of a two stage stochastic programmingprobl...
The ever growing performances of mathematical programming solvers allows to be thinking of solving m...
We consider distributionally robust two-stage stochastic convex programming problems, in which the r...
Many decision problems in science, engineering and economics are affected by uncertain parameters wh...
Affine policies are widely used as a solution approach in dynamic optimization where computing an op...
An important and challenging class of two-stage linear optimization problems are those without relat...
Stochastic optimization, especially multistage models, is well known to be computationally excruciat...
Multi-stage linear optimization is an integral modeling paradigm in supply chain, energy planning, a...
Discrete approximation of probability distributions is an important topic in stochastic programming....
We propose a tractable approximation scheme for convex (not necessarily linear) multi-stage robust o...
Stochastic optimization, especially multistage models, is well known to be computationally excruciat...
Linear stochastic programming provides a flexible toolbox for analyzing real-life decision situation...
We propose a Bayesian framework for assessing the relative strengths of data-driven ambiguity sets i...
Distributionally robust optimization (DRO) is a modeling framework in decision making under uncertai...
Two-stage stochastic optimization is a widely used framework for modeling uncertainty, where we have...
This paper considers distributionally robust formulations of a two stage stochastic programmingprobl...
The ever growing performances of mathematical programming solvers allows to be thinking of solving m...
We consider distributionally robust two-stage stochastic convex programming problems, in which the r...
Many decision problems in science, engineering and economics are affected by uncertain parameters wh...
Affine policies are widely used as a solution approach in dynamic optimization where computing an op...