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引用次数: 24

摘要

本文提出了一种利用部分可观察马尔可夫决策过程建立计划的方法。该方法从假设完全可观察性的基本解开始。部分可观测解是通过考虑从观测中获得的信息量的增加而逐步构建的。基本解决方案通过提供搜索边缘的评估函数来指导计划的扩展。我们展示了增量观察从基本解决方案向完整解决方案移动,允许规划者对实际领域中存在的行动结果和观察的不确定性进行建模。
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Incremental Markov-model planning
This paper presents an approach to building plans using partially observable Markov decision processes. The approach begins with a base solution that assumes full observability. The partially observable solution is incrementally constructed by considering increasing amounts of information from observations. The base solution directs the expansion of the plan by providing an evaluation function for the search fringe. We show that incremental observation moves from the base solution towards the complete solution, allowing the planner to model the uncertainty about action outcomes and observations that are present in real domains.
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