Some Insights into Lifelong Reinforcement Learning Systems

Authors: Changjian Li

License: CC BY 4.0

Abstract: A lifelong reinforcement learning system is a learning system that has the ability to learn through trail-and-error interaction with the environment over its lifetime. In this paper, I give some arguments to show that the traditional reinforcement learning paradigm fails to model this type of learning system. Some insights into lifelong reinforcement learning are provided, along with a simplistic prototype lifelong reinforcement learning system.

Submitted to arXiv on 27 Jan. 2020

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