有限采样访问下马尔可夫决策过程的策略综合

C. Baier, Clemens Dubslaff, Patrick Wienhöft, S. Kiebel
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引用次数: 0

摘要

控制理论、人工智能和形式化方法的中心任务是为在部分未知环境中操作的代理综合奖励最大化策略。在由灰盒马尔可夫决策过程(mdp)建模的环境中,代理行为的影响是已知的,但不包括所涉及的随机性。在本文中,我们通过强化学习设计了一种灰盒mdp策略综合算法,该算法利用区间mdp作为内部模型。为了与强化学习中有限的采样访问相竞争,我们将两个新概念纳入我们的算法中,专注于快速和成功的学习,而不是随机保证和最优性:低置信度边界探索强化了已经学习的实际策略的变体,行动范围将学习行动空间减少到有希望的行动。我们通过应用于人工智能和形式化方法社区的示例的原型实现来说明我们算法的好处。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Strategy Synthesis in Markov Decision Processes Under Limited Sampling Access
A central task in control theory, artificial intelligence, and formal methods is to synthesize reward-maximizing strategies for agents that operate in partially unknown environments. In environments modeled by gray-box Markov decision processes (MDPs), the impact of the agents' actions are known in terms of successor states but not the stochastics involved. In this paper, we devise a strategy synthesis algorithm for gray-box MDPs via reinforcement learning that utilizes interval MDPs as internal model. To compete with limited sampling access in reinforcement learning, we incorporate two novel concepts into our algorithm, focusing on rapid and successful learning rather than on stochastic guarantees and optimality: lower confidence bound exploration reinforces variants of already learned practical strategies and action scoping reduces the learning action space to promising actions. We illustrate benefits of our algorithms by means of a prototypical implementation applied on examples from the AI and formal methods communities.
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