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Probabilistic Planning via Heuristic Forward Search and Weighted Model Counting

机译:通过启发式正向搜索和加权模型计数进行概率规划

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We present a new algorithm for probabilistic planning with no observability. Our algorithm, called Probabilistic-FF, extends the heuristic forward-search machinery of Conformant-FF to problems with probabilistic uncertainty about both the initial state and action effects. Specifically, Probabilistic-FF combines Conformant-FF's techniques with a powerful machinery for weighted model counting in (weighted) CNFs, serving to elegantly define both the search space and the heuristic function. Our evaluation of Probabilistic-FF shows its fine scalability in a range of probabilistic domains, constituting a several orders of magnitude improvement over previous results in this area. We use a problematic case to point out the main open issue to be addressed by further research.
机译:我们提出了一种新的概率规划算法,没有可观察性。我们的算法称为Probabilistic-FF,将Conformant-FF的启发式正向搜索机制扩展到初始状态和动作效果都具有概率不确定性的问题。具体来说,Probabilistic-FF将Conformant-FF的技术与强大的机制相结合,可用于(加权)CNF中的加权模型计数,从而优雅地定义了搜索空间和启发式功能。我们对Probabilistic-FF的评估表明,它在各种概率域中均具有良好的可扩展性,与该领域以前的结果相比,提高了几个数量级。我们使用一个有问题的案例来指出有待进一步研究解决的主要未解决问题。

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