Reinforcement learning is a learning paradigm for solving sequential decision-making problems. Recent years have witnessed remarkable progress in reinforcement learning upon the fast development of deep neural networks. Along with the promising prospects of reinforcement learning in numerous domains such as robotics and game-playing, transfer learning has arisen to tackle various challenges faced by reinforcement learning, by transferring knowledge from external expertise to facilitate the efficiency and effectiveness of the learning process. In this survey, we systematically investigate the recent progress of transfer learning approaches in the context of deep reinforcement learning. Specifically, we provide a framework for categorizing the state-of-the-art transfer learning approaches, under which we analyze their goals, methodologies, compatible reinforcement learning backbones, and practical applications. We also draw connections between transfer learning and other relevant topics from the reinforcement learning perspective and explore their potential challenges that await future research progress.
翻译:强化学习是解决连续决策问题的一种学习模式。近年来,在加强深层神经网络快速发展的学习方面取得了显著进展。随着在机器人和游戏游戏等众多领域加强学习的前景,通过从外部专门知识转让知识,促进学习过程的效率和效力,出现了解决强化学习所面临的各种挑战的转移学习。在这次调查中,我们系统地调查了在深层强化学习背景下转让学习方法的最新进展。具体地说,我们提供了一个框架,用于对最先进的转让学习方法进行分类,据此我们分析其目标、方法、兼容的强化学习骨干和实用应用。我们还从强化学习角度将转让学习与其他相关专题联系起来,并探索其等待未来研究进展的潜在挑战。