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From FOND to Robust Probabilistic Planning: Computing Compact Policies that Bypass Avoidable Deadends

机译:从喜欢强大的概率规划:计算紧凑的政策,绕过避免的防护

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We address the class of probabilistic planning problems where the objective is to maximize the probability of reaching a prescribed goal. The complexity of probabilistic planning problems makes it difficult to compute high quality solutions for large instances, and existing algorithms either do not scale, or do so at the expense of the solution quality. We leverage core similarities between probabilistic and fully observable non-deterministic (FOND) planning to construct a sound, offline probabilistic planner, ProbPRP, that exploits algorithmic advances from state-of-the-art FOND planner, PRP, to compute compact policies that are guaranteed to by-pass avoidable deadends. We evaluate ProbPRP on a selection of benchmarks used in past probabilistic planning competitions. The results show that ProbPRP, in many cases, outperforms the state of the art, computing substantially more robust policies and at times doing so orders of magnitude faster.
机译:我们解决了目标的概率规划问题,其中目标是最大限度地提高达到规定目标的可能性。 概率规划问题的复杂性使得难以计算大型实例的高质量解决方案,并且现有的算法不扩展,或者以牺牲解决方案质量为代价。 我们利用概率和完全可观察的非确定性(喜欢)计划之间的核心相似性来构建声音,离线概率规划师ProbPRP,该ProbPRP从最先进的Fand Planner(PRP)中利用算法的进步来计算诸多策略的算法 保证逐行可避免的死亡。 我们在过去概率规划竞赛中使用的一系列基准计算Probprp。 结果表明,在许多情况下,ProbPRP在众多情况下优于现有技术,计算大量更强大的策略,并且有时会更快地执行额定数量。

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