2020
DOI: 10.5121/ijaia.2020.11605
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Automatic Transfer Rate Adjustment for Transfer Reinforcement Learning

Abstract: 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… Show more

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