Methods and Algorithms for Knowledge Reuse in Multiagent Reinforcement Learning

Felipe Leno da Silva, Anna Helena Reali Costa
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Abstract

Reinforcement Learning (RL) is a powerful tool that has been used to solve increasingly complex tasks. RL operates through repeated interactions of the learning agent with the environment, via trial and error. However, this learning process is extremely slow, requiring many interactions. In this thesis, we leverage previous knowledge so as to accelerate learning in multiagent RL problems. We propose knowledge reuse both from previous tasks and from other agents. Several flexible methods are introduced so that each of these two types of knowledge reuse is possible. This thesis adds important steps towards more flexible and broadly applicable multiagent transfer learning methods.
多智能体强化学习中知识重用的方法与算法
强化学习(RL)是一种强大的工具,已被用于解决日益复杂的任务。强化学习通过学习代理与环境的反复互动,通过试错来运作。然而,这个学习过程非常缓慢,需要很多互动。在本文中,我们利用先前的知识来加速多智能体强化学习问题的学习。我们建议从以前的任务和其他代理中重用知识。介绍了几种灵活的方法,使这两种类型的知识重用都成为可能。本文为更灵活和广泛适用的多智能体迁移学习方法增加了重要的步骤。
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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