DocumentCode :
3747035
Title :
Quantifying uncertainty in sample average approximation
Author :
Henry Lam; Enlu Zhou
Author_Institution :
Department of Industrial & Operations Engineering, University of Michigan, 1205 Beal Ave., Ann Arbor, 48109, USA
fYear :
2015
Firstpage :
3846
Lastpage :
3857
Abstract :
We consider stochastic optimization problems in which the input probability distribution is not fully known, and can only be observed through data. Common procedures handle such problems by optimizing an empirical counterpart, namely via using an empirical distribution of the input. The optimal solutions obtained through such procedures are hence subject to uncertainty of the data. In this paper, we explore techniques to quantify this uncertainty that have potentially good finite-sample performance. We consider three approaches: the empirical likelihood method, nonparametric Bayesian approach, and the bootstrap approach. They are designed to approximate the confidence intervals or posterior distributions of the optimal values or the optimality gaps. We present computational procedures for each of the approaches and discuss their relative benefits. A numerical example on conditional value-at-risk is used to demonstrate these methods.
Keywords :
"Uncertainty","Optimization","Probability distribution","Approximation error","Convergence","Convex functions"
Publisher :
ieee
Conference_Titel :
Winter Simulation Conference (WSC), 2015
Electronic_ISBN :
1558-4305
Type :
conf
DOI :
10.1109/WSC.2015.7408541
Filename :
7408541
Link To Document :
بازگشت