Using Transfer Learning to Speed-Up Reinforcement Learning: A Cased-Based Approach

L. A. Jr., J. Matsuura, R. L. de Mántaras, Reinaldo A. C. Bianchi
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引用次数: 32

Abstract

Reinforcement Learning (RL) is a well-known technique for the solution of problems where agents need to act with success in an unknown environment, learning through trial and error. However, this technique is not efficient enough to be used in applications with real world demands due to the time that the agent needs to learn. This paper investigates the use of Transfer Learning (TL) between agents to speed up the well-known Q-learning Reinforcement Learning algorithm. The new approach presented here allows the use of cases in a case base as heuristics to speed up the Q-learning algorithm, combining Case-Based Reasoning (CBR) and Heuristically Accelerated Reinforcement Learning (HARL) techniques. A set of empirical evaluations were conducted in the Mountain Car Problem Domain, where the actions learned during the solution of the 2D version of the problem can be used to speed up the learning of the policies for its 3D version. The experiments were made comparing the Q-learning Reinforcement Learning algorithm, the HAQL Heuristic Accelerated Reinforcement Learning (HARL) algorithm and the TL-HAQL algorithm, proposed here. The results show that the use of a case-base for transfer learning can lead to a significant improvement in the performance of the agent, making it learn faster than using either RL or HARL methods alone.
强化学习(RL)是一种众所周知的技术,用于解决智能体需要在未知环境中成功行动的问题,通过试错学习。然而,由于代理需要学习的时间,这种技术不够有效,无法用于具有现实世界需求的应用程序。本文研究了使用智能体之间的迁移学习(TL)来加速著名的Q-learning强化学习算法。本文提出的新方法允许使用案例库中的案例作为启发式方法来加速q -学习算法,结合基于案例的推理(CBR)和启发式加速强化学习(HARL)技术。在山地车问题域中进行了一组经验评估,其中在解决问题的2D版本中学习到的动作可以用来加速其3D版本的策略学习。实验比较了本文提出的Q-learning强化学习算法、HAQL启发式加速强化学习(HARL)算法和TL-HAQL算法。结果表明,使用案例库进行迁移学习可以显著提高智能体的性能,使其学习速度比单独使用RL或HARL方法更快。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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