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Main Authors: Agarwal, Siddhant, Sikchi, Harshit, Stone, Peter, Zhang, Amy
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2411.19418
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author Agarwal, Siddhant
Sikchi, Harshit
Stone, Peter
Zhang, Amy
author_facet Agarwal, Siddhant
Sikchi, Harshit
Stone, Peter
Zhang, Amy
contents Having explored an environment, intelligent agents should be able to transfer their knowledge to most downstream tasks within that environment without additional interactions. Referred to as "zero-shot learning", this ability remains elusive for general-purpose reinforcement learning algorithms. While recent works have attempted to produce zero-shot RL agents, they make assumptions about the nature of the tasks or the structure of the MDP. We present Proto Successor Measure: the basis set for all possible behaviors of a Reinforcement Learning Agent in a dynamical system. We prove that any possible behavior (represented using visitation distributions) can be represented using an affine combination of these policy-independent basis functions. Given a reward function at test time, we simply need to find the right set of linear weights to combine these bases corresponding to the optimal policy. We derive a practical algorithm to learn these basis functions using reward-free interaction data from the environment and show that our approach can produce the optimal policy at test time for any given reward function without additional environmental interactions. Project page: https://agarwalsiddhant10.github.io/projects/psm.html.
format Preprint
id arxiv_https___arxiv_org_abs_2411_19418
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Proto Successor Measure: Representing the Behavior Space of an RL Agent
Agarwal, Siddhant
Sikchi, Harshit
Stone, Peter
Zhang, Amy
Machine Learning
Artificial Intelligence
Having explored an environment, intelligent agents should be able to transfer their knowledge to most downstream tasks within that environment without additional interactions. Referred to as "zero-shot learning", this ability remains elusive for general-purpose reinforcement learning algorithms. While recent works have attempted to produce zero-shot RL agents, they make assumptions about the nature of the tasks or the structure of the MDP. We present Proto Successor Measure: the basis set for all possible behaviors of a Reinforcement Learning Agent in a dynamical system. We prove that any possible behavior (represented using visitation distributions) can be represented using an affine combination of these policy-independent basis functions. Given a reward function at test time, we simply need to find the right set of linear weights to combine these bases corresponding to the optimal policy. We derive a practical algorithm to learn these basis functions using reward-free interaction data from the environment and show that our approach can produce the optimal policy at test time for any given reward function without additional environmental interactions. Project page: https://agarwalsiddhant10.github.io/projects/psm.html.
title Proto Successor Measure: Representing the Behavior Space of an RL Agent
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2411.19418