论文标题
用于基于模型的深度强化学习的多源传输学习
Multi-Source Transfer Learning for Deep Model-Based Reinforcement Learning
论文作者
论文摘要
强化学习中的一个关键挑战是减少与代理商掌握给定任务所需的环境相互作用的数量。转移学习建议通过从先前学习的任务中重新使用知识来解决这个问题。但是,确定哪些源任务最适合于知识提取,以及关于要转移哪种算法组件的选择,代表了其在增强学习中应用的严重障碍。本文的目的是通过模块化多源传输学习技术解决这些问题。所提出的技术会自动学习如何从源任务中提取有用的信息,而不管州行动空间和奖励功能的差异如何。我们通过广泛而挑战性的跨域实验来支持我们的主张,以进行视觉控制。
A crucial challenge in reinforcement learning is to reduce the number of interactions with the environment that an agent requires to master a given task. Transfer learning proposes to address this issue by re-using knowledge from previously learned tasks. However, determining which source task qualifies as the most appropriate for knowledge extraction, as well as the choice regarding which algorithm components to transfer, represent severe obstacles to its application in reinforcement learning. The goal of this paper is to address these issues with modular multi-source transfer learning techniques. The proposed techniques automatically learn how to extract useful information from source tasks, regardless of the difference in state-action space and reward function. We support our claims with extensive and challenging cross-domain experiments for visual control.