The Need for a Big World Simulator: A Scientific Challenge for Continual Learning

Published: 04 Jun 2024, Last Modified: 19 Jul 2024Finding the Frame: RLC 2024 PosterEveryoneRevisionsBibTeXCC BY 4.0
Keywords: continual learning, synthetic environments, non-stationarity
TL;DR: This paper aims to formalize two desiderata for the design of future simulated environments for continual learning.
Abstract: The "small agent, big world" frame offers a conceptual view that motivates the need for continual learning. The idea is that a small agent operating in much bigger world cannot store all information that the world has to offer. To perform well, the agent must be carefully designed to ingest, retain, and eject the right information. To enable the development of performant continual learning agents, a number of synthetic environments have been proposed. However, these benchmarks suffer from limitations, including unnatural distribution shifts and a lack of fidelity to the ``small agent, big world'' framing. This paper aims to formalize two desiderata for the design of future simulated environments. These two criteria aim to reflect the objectives and complexity of continual learning in practical settings while enabling rapid prototyping of algorithms on a smaller scale.
Submission Number: 31
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