Improving generalization in reinforcement learning through forked agents

Olivier Moulin, Vincent François-Lavet, M. Hoogendoorn
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Abstract

An eco-system of agents each having their own policy with some, but limited, generalizability has proven to be a reliable approach to increase generalization across procedurally generated environments. In such an approach, new agents are regularly added to the eco-system when encountering a new environment that is outside of the scope of the eco-system. The speed of adaptation and general effectiveness of the eco-system approach highly depends on the initialization of new agents. In this paper we propose different initialization techniques, inspired from Deep Neural Network initialization and transfer learning, and study their impact.
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通过分叉代理改进强化学习的泛化
每个代理的生态系统都有自己的策略,具有一些但有限的泛化性,这已被证明是一种可靠的方法,可以在程序生成的环境中增加泛化。在这种方法中,当遇到生态系统范围之外的新环境时,新的代理会定期添加到生态系统中。生态系统方法的适应速度和总体有效性在很大程度上取决于新agent的初始化。在本文中,我们提出了不同的初始化技术,灵感来自深度神经网络初始化和迁移学习,并研究了它们的影响。
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