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Advice-Exchange Between Evolutionary Algorithms and Reinforcement Learning Agents: Experiments in the Pursuit Domain

机译:进化算法和强化学习代理之间的建议 - 追求域的实验

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This research aims at studying the effects of exchanging information during the learning process in Multiagent Systems. The concept of advice-exchange, introduced in previous contributions, consists in enabling an agent to request extra feedback, in the form of episodic advice, from other agents that are solving similar problems. The work that was previously focused on the exchange of information between agents that were solving detached problems is now concerned with groups of learning-agents that share the same environment. This change added new difficulties to the task. The experiments reported below were conducted to detect the causes and correct the shortcomings that emerged when moving from environments where agents worked in detached problems to those where agents are interacting in the same environment. New concepts, such as self confidence, trust and advisor preference are introduced in this text.
机译:本研究旨在研究多读系统在学习过程中交换信息的影响。在以前的贡献中介绍的咨询交换概念包括使代理商以解决类似问题的其他代理商要求额外反馈,以eoisodic建议的形式要求。以前专注于正在解决已脱离问题的代理商之间的信息交换的工作现在关注群体分享相同环境的学习代理。这更改为任务增加了新的困难。下面报告的实验是进行的,以检测原因并纠正当从在与代理在同一环境中相互作用的脱离问题中运作的代理的环境时出现的缺点。在本文中引入了新的概念,例如自信,信任和顾问偏好。

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