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SEQUENTIAL IMPORTANCE SAMPLING ALGORITHMS FOR DYNAMIC STOCHASTIC PROGRAMMING

机译:动态随机规划的顺序重要抽样算法

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摘要

This paper gives a comprehensive treatment of EVPI-based sequential importance sampling algorithms for dynamic (multistage) stochastic programming problems. Both theory and computational algorithms are discussed. Under general assumptions it is shown that both an expected value of perfect information (EVPI) process and the corresponding marginal EVPI process (the supremum norm of the conditional expectation of its generalized derivative) are nonanticipative nonnegative supermartingales. These processes are used as importance criteria in the class of sampling algorithms treated in the paper. When their values are negligible at a node of the current sample problem scenario tree, scenarios descending from the node are replaced by a single scenario at the next iteration. On the other hand, high values lead to increasing the number of scenarios descending from the node. Both the small sample and asymptotic properties of the sample problem estimates arising from the algorithms are established, and the former are evaluated numerically in the context of a financial planning problem. Finally, current and future research is described.
机译:本文针对基于动态(多阶段)随机规划问题的基于EVPI的顺序重要性采样算法进行了全面处理。讨论了理论和计算算法。在一般假设下,完美信息的期望值(EVPI)过程和相应的边际EVPI过程(其广义导数的有条件期望的最高范数)均是非预期的非负超级市场。这些过程在本文处理的采样算法类别中用作重要性标准。当它们的值在当前样本问题方案树的某个节点上可忽略不计时,在下一次迭代时,该节点派生的方案将被单个方案替换。另一方面,较高的值会导致从节点降级的方案数量增加。建立了由算法引起的样本问题估计的小样本和渐近性质,并在财务计划问题的背景下对前者进行了数值评估。最后,描述了当前和未来的研究。

著录项

  • 来源
    《Journal of Mathematical Sciences》 |2006年第4期|p.1422-1444|共23页
  • 作者

    M. A. H. Dempster;

  • 作者单位

    Centre for Financial Research, Judge Institute of Management Studies, University of Cambridge and Cambridge Systems Associates Limited, Cambridge, UK;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 数学;
  • 关键词

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