DocumentCode :
3747022
Title :
Stochastic optimization using Hellinger distance
Author :
Anand N. Vidyashankar;Jie Xu
Author_Institution :
Department of Statistics, George Mason University, 4400 University Drive, Fairfax, VA 22030, USA
fYear :
2015
Firstpage :
3702
Lastpage :
3713
Abstract :
Stochastic optimization facilitates decision making in uncertain environments. In typical problems, probability distributions are fit to historical data for the chance variables and then optimization is carried out, as if the estimated probability distributions are the “truth”. However, this perspective is optimistic in nature and can frequently lead to sub-optimal or infeasible results because the distribution can be misspecified and the historical data set may be contaminated. In this paper, we propose to integrate existing approaches to decision making under uncertainty with robust and efficient estimation procedures using Hellinger distance. Within the existing decision-making methodologies that make use of parametric models, our approach offers robustness against model misspecifications and data contamination. Additionally, it also facilitates quantification of the impact of uncertainty in historical data on optimization results.
Keywords :
"Optimization","Uncertainty","Servers","Stochastic processes","Robustness","Resource management","Data models"
Publisher :
ieee
Conference_Titel :
Winter Simulation Conference (WSC), 2015
Electronic_ISBN :
1558-4305
Type :
conf
DOI :
10.1109/WSC.2015.7408528
Filename :
7408528
Link To Document :
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