PAC optimal MDP planning with application to invasive species management

Majid Alkaee Taleghan, Thomas G. Dietterich, Mark Crowley, K. Hall, H. Albers
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引用次数: 22

Abstract

In a simulator-defined MDP, the Markovian dynamics and rewards are provided in the form of a simulator from which samples can be drawn. This paper studies MDP planning algorithms that attempt to minimize the number of simulator calls before terminating and outputting a policy that is approximately optimal with high probability. The paper introduces two heuristics for efficient exploration and an improved confidence interval that enables earlier termination with probabilistic guarantees. We prove that the heuristics and the confidence interval are sound and produce with high probability an approximately optimal policy in polynomial time. Experiments on two benchmark problems and two instances of an invasive species management problem show that the improved confidence intervals and the new search heuristics yield reductions of between 8% and 47% in the number of simulator calls required to reach near-optimal policies.
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PAC优化MDP规划及其在入侵物种管理中的应用
在模拟器定义的MDP中,马尔可夫动态和奖励以模拟器的形式提供,从中可以提取样本。本文研究了MDP规划算法,该算法试图在终止和输出高概率近似最优策略之前最小化模拟器调用的数量。本文介绍了两种有效探索的启发式方法和一种改进的置信区间,可以在概率保证的情况下实现更早的终止。我们证明了启发式和置信区间是合理的,并在多项式时间内以高概率产生近似最优策略。在两个基准问题和两个入侵物种管理问题实例上的实验表明,改进的置信区间和新的搜索启发式方法使达到接近最优策略所需的模拟器调用次数减少了8%至47%。
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