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Continual Auxiliary Task Learning

Authors :
McLeod, Matthew
Lo, Chunlok
Schlegel, Matthew
Jacobsen, Andrew
Kumaraswamy, Raksha
White, Martha
White, Adam
Publication Year :
2022

Abstract

Learning auxiliary tasks, such as multiple predictions about the world, can provide many benefits to reinforcement learning systems. A variety of off-policy learning algorithms have been developed to learn such predictions, but as yet there is little work on how to adapt the behavior to gather useful data for those off-policy predictions. In this work, we investigate a reinforcement learning system designed to learn a collection of auxiliary tasks, with a behavior policy learning to take actions to improve those auxiliary predictions. We highlight the inherent non-stationarity in this continual auxiliary task learning problem, for both prediction learners and the behavior learner. We develop an algorithm based on successor features that facilitates tracking under non-stationary rewards, and prove the separation into learning successor features and rewards provides convergence rate improvements. We conduct an in-depth study into the resulting multi-prediction learning system.<br />Comment: Neural Information Processing Systems 2021

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2202.11133
Document Type :
Working Paper