时间逻辑公式在强化学习中的迁移

Zhe Xu, U. Topcu
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引用次数: 42

摘要

将高级知识从源任务转移到目标任务是加速强化学习(RL)的有效途径。例如,命题逻辑和一阶逻辑被用来表示这些知识。我们研究任务之间的知识转移,其中事件的时间很重要。我们称这类任务为临时任务。我们通过逻辑可转移性的概念将时间任务之间的相似性具体化,并在不同但相似的时间任务之间开发了一种迁移学习方法。我们首先提出了一种推理技术,从两个任务的RL中收集的标记轨迹中提取顺序析取范式的度量间隔时间逻辑(MITL)公式。如果通过这种推断确定了逻辑可转移性,我们为从两个任务推断出的MITL公式的每个顺序合取子公式构造一个时间自动机。我们对扩展状态执行强化学习,扩展状态包括源任务的时间自动机的位置和时钟值。然后,我们在两个任务的时间自动机的相应组件(时钟,位置等)之间建立映射,并在建立映射的基础上传递扩展的q函数。最后,我们从传递的扩展q函数开始,对目标任务的扩展状态执行强化学习。我们的实现结果表明,根据源任务和目标任务的相似程度,通过在扩展状态空间中执行RL,目标任务的采样效率可以提高一个数量级,并使用转移的扩展q函数进一步提高一个数量级。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Transfer of Temporal Logic Formulas in Reinforcement Learning
Transferring high-level knowledge from a source task to a target task is an effective way to expedite reinforcement learning (RL). For example, propositional logic and first-order logic have been used as representations of such knowledge. We study the transfer of knowledge between tasks in which the timing of the events matters. We call such tasks temporal tasks. We concretize similarity between temporal tasks through a notion of logical transferability, and develop a transfer learning approach between different yet similar temporal tasks. We first propose an inference technique to extract metric interval temporal logic (MITL) formulas in sequential disjunctive normal form from labeled trajectories collected in RL of the two tasks. If logical transferability is identified through this inference, we construct a timed automaton for each sequential conjunctive subformula of the inferred MITL formulas from both tasks. We perform RL on the extended state which includes the locations and clock valuations of the timed automata for the source task. We then establish mappings between the corresponding components (clocks, locations, etc.) of the timed automata from the two tasks, and transfer the extended Q-functions based on the established mappings. Finally, we perform RL on the extended state for the target task, starting with the transferred extended Q-functions. Our implementation results show, depending on how similar the source task and the target task are, that the sampling efficiency for the target task can be improved by up to one order of magnitude by performing RL in the extended state space, and further improved by up to another order of magnitude using the transferred extended Q-functions.
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