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Integrating Agent Advice and Previous Task Solutions in Multiagent Reinforcement Learning: Doctoral Consortium

机译:集成代理咨询和以前的多元素强化学习任务解决方案:博士财团

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Reinforcement learning methods have successfully been applied to build autonomous agents that solve challenging sequential decisionmaking problems. However, agents need a long time to learn a task, especially when multiple autonomous agents are in the environment. This research aims to propose a Transfer Learning framework to accelerate learning by combining two knowledge sources: (i) previously learned tasks; and (ii) advice from a more experienced agent. The definition of such framework requires answering several challenging research questions, including: How to abstract and represent knowledge, in order to allow generalization and posterior reuse?, How and when to transfer and receive knowledge in an efficient manner?, and How to consistently combine knowledge from several sources?
机译:加固学习方法已成功地应用于建立解决具有挑战性的顺序决策问题的自治代理。 然而,代理需要很长时间才能学习任务,特别是当多个自治代理在环境中时。 本研究旨在通过组合两个知识来源来提出转移学习框架来加速学习:(i)以前学识过的任务; (ii)来自更有经验的代理人的建议。 此类框架的定义需要回答几个具有挑战性的研究问题,包括:如何摘要和代表知识,以允许泛化和后退重复使用?,如何以及何时以有效的方式转移和接收知识?,以及如何持续结合 来自几个来源的知识?

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