We study regret minimization in non-episodic factored Markov decision processes (FMDPs), where all existing algorithms make the strong assumption that the factored structure of the FMDP is known to the learner in advance. In this paper, we provide the first algorithm that learns the structure of the FMDP while minimizing the regret. Our algorithm is based on the optimism in face of uncertainty principle, combined with a simple statistical method for structure learning, and can be implemented efficiently given oracle-access to an FMDP planner. Moreover, we give a variant of our algorithm that remains efficient even when the oracle is limited to non-factored actions, which is the case with almost all existing approximate planners. Finally, we leverage our techniques to prove a novel lower bound for the known structure case, closing the gap to the regret bound of Chen et al. [2021].
翻译:我们研究的是在非考虑因素的Markov决策程序中的最小化(FMDPs ), 所有现有的算法都强有力地假定学习者事先知道FMDP的因子结构。在本文中,我们提供了第一个在尽量减少遗憾的同时学习FMDP结构的算法。我们的算法基于面对不确定性原则的乐观态度,加上简单的结构学习统计方法,并且可以有效地实施,让FMDP规划者有机会或有机会获得FMDP计划者。此外,我们给出了我们的算法的变式,即使在甲骨骼限于非因子行动的情况下,仍然有效,而几乎所有现有的近似规划者都是如此。最后,我们利用我们的技术来证明,对已知的结构案例来说是新的低约束,缩小Chen等人的遗憾束缚。 [2021]