On sample size control in sample average approximations for solving smooth stochastic programs

被引:0
作者
Johannes O. Royset
机构
[1] Naval Postgraduate School,Operations Research Department
来源
Computational Optimization and Applications | 2013年 / 55卷
关键词
Stochastic programming; Sample average approximations; Sample size selection; Algorithm control;
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学科分类号
摘要
We consider smooth stochastic programs and develop a discrete-time optimal-control problem for adaptively selecting sample sizes in a class of algorithms based on variable sample average approximations (VSAA). The control problem aims to minimize the expected computational cost to obtain a near-optimal solution of a stochastic program and is solved approximately using dynamic programming. The optimal-control problem depends on unknown parameters such as rate of convergence, computational cost per iteration, and sampling error. Hence, we implement the approach within a receding-horizon framework where parameters are estimated and the optimal-control problem is solved repeatedly during the calculations of a VSAA algorithm. The resulting sample-size selection policy consistently produces near-optimal solutions in short computing times as compared to other plausible policies in several numerical examples.
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页码:265 / 309
页数:44
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