转移强化学习的自动转移率调整

H. Kono, Yuto Sakamoto, Yonghoon Ji, Hiromitsu Fujii
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引用次数: 1

摘要

本文提出了一种新的迁移强化学习参数,以避免智能体使用源任务的迁移策略时的过拟合。学习机器人系统最近被研究用于许多应用,如家庭机器人、通信机器人和仓库机器人。但是,如果代理重用源任务中已经充分学习到的知识,则可能发生死锁,并且可能无法实现适当的迁移学习。在之前的工作中,提出了一个称为传输速率的参数来调整传输比率,其贡献包括避免目标任务中的死锁。然而,调整参数取决于人的直觉和经验。此外,还没有讨论确定传输速率的方法。因此,本文提出了一种利用s型函数自动调节传输速率的方法。此外,通过计算机仿真验证了所提方法在目标任务(即知识重用情况)中提高环境适应性能的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Transfer Rate Adjustment for Transfer Reinforcement Learning
This paper proposes a novel parameter for transfer reinforcement learning to avoid over-fitting when an agent uses a transferred policy from a source task. Learning robot systems have recently been studied for many applications, such as home robots, communication robots, and warehouse robots. However, if the agent reuses the knowledge that has been sufficiently learned in the source task, deadlock may occur and appropriate transfer learning may not be realized. In the previous work, a parameter called transfer rate was proposed to adjust the ratio of transfer, and its contribution include avoiding dead lock in the target task. However, adjusting the parameter depends on human intuition and experiences. Furthermore, the method for deciding transfer rate has not discussed. Therefore, an automatic method for adjusting the transfer rate is proposed in this paper using a sigmoid function. Further, computer simulations are used to evaluate the effectiveness of the proposed method to improve the environmental adaptation performance in a target task, which refers to the situation of reusing knowledge.
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