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Main Authors: Rafiee, Banafsheh, Ghiassian, Sina, Jin, Jun, Sutton, Richard, Luo, Jun, White, Adam
Format: Preprint
Published: 2022
Subjects:
Online Access:https://arxiv.org/abs/2210.14361
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author Rafiee, Banafsheh
Ghiassian, Sina
Jin, Jun
Sutton, Richard
Luo, Jun
White, Adam
author_facet Rafiee, Banafsheh
Ghiassian, Sina
Jin, Jun
Sutton, Richard
Luo, Jun
White, Adam
contents In this paper, we explore an approach to auxiliary task discovery in reinforcement learning based on ideas from representation learning. Auxiliary tasks tend to improve data efficiency by forcing the agent to learn auxiliary prediction and control objectives in addition to the main task of maximizing reward, and thus producing better representations. Typically these tasks are designed by people. Meta-learning offers a promising avenue for automatic task discovery; however, these methods are computationally expensive and challenging to tune in practice. In this paper, we explore a complementary approach to the auxiliary task discovery: continually generating new auxiliary tasks and preserving only those with high utility. We also introduce a new measure of auxiliary tasks' usefulness based on how useful the features induced by them are for the main task. Our discovery algorithm significantly outperforms random tasks and learning without auxiliary tasks across a suite of environments.
format Preprint
id arxiv_https___arxiv_org_abs_2210_14361
institution arXiv
publishDate 2022
record_format arxiv
spellingShingle Auxiliary task discovery through generate-and-test
Rafiee, Banafsheh
Ghiassian, Sina
Jin, Jun
Sutton, Richard
Luo, Jun
White, Adam
Machine Learning
Artificial Intelligence
In this paper, we explore an approach to auxiliary task discovery in reinforcement learning based on ideas from representation learning. Auxiliary tasks tend to improve data efficiency by forcing the agent to learn auxiliary prediction and control objectives in addition to the main task of maximizing reward, and thus producing better representations. Typically these tasks are designed by people. Meta-learning offers a promising avenue for automatic task discovery; however, these methods are computationally expensive and challenging to tune in practice. In this paper, we explore a complementary approach to the auxiliary task discovery: continually generating new auxiliary tasks and preserving only those with high utility. We also introduce a new measure of auxiliary tasks' usefulness based on how useful the features induced by them are for the main task. Our discovery algorithm significantly outperforms random tasks and learning without auxiliary tasks across a suite of environments.
title Auxiliary task discovery through generate-and-test
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2210.14361