Continual Learning As Computationally Constrained Reinforcement Learning
2023 Β· Saurabh Kumar, Henrik Marklund, Ashish Rao, et al.
Abstract
An agent that efficiently accumulates knowledge to develop increasingly sophisticated skills over a long lifetime could advance the frontier of artificial intelligence capabilities. The design of such agents, which remains a long-standing challenge of artificial intelligence, is addressed by the subject of continual learning. This monograph clarifies and formalizes concepts of continual learning, introducing a framework and set of tools to stimulate further research.
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