Non-asymptotic confidence bounds for the optimal value of a stochastic program


Autoria(s): Guigues, Vincent Gérard Yannick; Juditsky, Anatoli; Nemirovski, Arkadi Semenovich
Data(s)

06/04/2016

06/04/2016

2016

Resumo

We discuss a general approach to building non-asymptotic confidence bounds for stochastic optimization problems. Our principal contribution is the observation that a Sample Average Approximation of a problem supplies upper and lower bounds for the optimal value of the problem which are essentially better than the quality of the corresponding optimal solutions. At the same time, such bounds are more reliable than “standard” confidence bounds obtained through the asymptotic approach. We also discuss bounding the optimal value of MinMax Stochastic Optimization and stochastically constrained problems. We conclude with a small simulation study illustrating the numerical behavior of the proposed bounds.

Identificador

http://hdl.handle.net/10438/16242

Idioma(s)

en_US

Publicador

EMAp - Escola de Matemática Aplicada

Palavras-Chave #Sample average approximation #Confidence interval #Minmax Stochastic optimization #Stochastically constrained problems #Processo estocástico #Intervalo de confiança (Estatística) #Média (Matemática)
Tipo

Article (Journal/Review)