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Progressive hedging as a meta-heuristic applied to stochastic

机译:渐进式对冲作为一种应用于随机的元启发式方法

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摘要

In a great many situations, the data for optimization problems cannot be known with certainty and furthermore the decision process will take place in multiple time stages as the uncertainties are resolved. This gives rise to a need for stochastic programming (SP) methods that create solutions that are hedged against future uncertainty. The progressive hedging algorithm (PHA) of Rockafellar and Wets is a general method for SP. We cast the PHA in a meta-heuristic framework with the sub-problems generated for each scenario solved heuristically. Rather than using an approximate search algorithm for the exact problem as is typically the case in the meta-heuristic literature, we use an algorithm for sub-problems that is exact in its usual context but serves as a heuristic for our meta-heuristic. Computational results reported for stochastic lot-sizing problems demonstrate that the method is effective.
机译:在很多情况下,无法确定用于优化问题的数据,此外,随着不确定性的解决,决策过程将在多个时间阶段进行。这引起了对随机编程(SP)方法的需求,该方法可创建可解决未来不确定性的解决方案。 Rockafellar和Wets的渐进式对冲算法(PHA)是SP的通用方法。我们将PHA转换为元启发式框架,并为每个通过启发式解决的方案生成的子问题。与其像在元启发式文献中通常使用的近似搜索算法来解决精确问题一样,不如对子问题使用一种算法,该子问题在其通常情况下是精确的,但对我们的元启发式而言是一种启发式。报告的随机批量问题的计算结果表明该方法是有效的。

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