随机最短路径问题的代价划分启发式算法

Thorsten Klößner, F. Pommerening, Thomas Keller, G. Röger
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引用次数: 1

摘要

在经典规划中,成本划分是一种强大的方法,它可以在保留可接受边界的情况下组合多个可接受的启发式方法。本文通过将确定性转移系统推广到随机最短路径问题,将成本分配理论推广到概率规划中。我们证明了与成本分配相关的基本结果在我们的扩展理论中仍然成立。我们还研究了如何最优地划分ssp抽象启发式的开销。最后,我们分析了面向奖励的马尔可夫决策过程的职业度量启发式以及近似线性规划理论。所有这些都符合我们的框架,可以看作是成本划分的启发式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cost Partitioning Heuristics for Stochastic Shortest Path Problems
In classical planning, cost partitioning is a powerful method which allows to combine multiple admissible heuristics while retaining an admissible bound. In this paper, we extend the theory of cost partitioning to probabilistic planning by generalizing from deterministic transition systems to stochastic shortest path problems (SSPs). We show that fundamental results related to cost partitioning still hold in our extended theory. We also investigate how to optimally partition costs for a large class of abstraction heuristics for SSPs. Lastly, we analyze occupation measure heuristics for SSPs as well as the theory of approximate linear programming for reward-oriented Markov decision processes. All of these fit our framework and can be seen as cost-partitioned heuristics.
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