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Monte Carlo bounding techniques for determining solution quality in stochastic programs

机译:用于确定随机程序中解决方案质量的蒙特卡洛定界技术

摘要

[[abstract]]A stochastic program SP with solution value z* can be approximately solved by sampling n realizations of the program's stochastic parameters, and by solving the resulting `approximating problem' for (x*n, z*n). We show that, in expectation, z*n is a lower bound on z* and that this bound monotonically improves as n increases. The first result is used to construct confidence intervals on the optimality gap for any candidate solution x to SP, e.g., x = x*n. A sampling procedure based on common random numbers ensures nonnegative gap estimates and provides significant variance reduction over naive sampling on four test problems.
机译:[[抽象]]具有解值z *的随机程序SP可以通过对程序的随机参数的n个实现进行采样并解决(x * n,z * n)的结果“近似问题”来近似解决。我们表明,可以预期的是,z * n是z *的下界,并且随着n的增加,该界线单调提高。第一个结果用于在SP的任何候选解x(例如x = x * n)的最佳间隙上构建置信区间。基于常见随机数的采样过程可确保非负的缺口估计,并且与在四个测试问题上的纯朴抽样相比,可以显着减少方差。

著录项

  • 作者

    Mak Wai-Kei;

  • 作者单位
  • 年度 2012
  • 总页数
  • 原文格式 PDF
  • 正文语种 [[iso]]en
  • 中图分类

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