Saved in:
Bibliographic Details
Main Authors: Wan, Yi, Korenkevych, Dmytro, Zhu, Zheqing
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2501.06937
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866912185495584768
author Wan, Yi
Korenkevych, Dmytro
Zhu, Zheqing
author_facet Wan, Yi
Korenkevych, Dmytro
Zhu, Zheqing
contents In reinforcement learning (RL), continuing tasks refer to tasks where the agent-environment interaction is ongoing and can not be broken down into episodes. These tasks are suitable when environment resets are unavailable, agent-controlled, or predefined but where all rewards-including those beyond resets-are critical. These scenarios frequently occur in real-world applications and can not be modeled by episodic tasks. While modern deep RL algorithms have been extensively studied and well understood in episodic tasks, their behavior in continuing tasks remains underexplored. To address this gap, we provide an empirical study of several well-known deep RL algorithms using a suite of continuing task testbeds based on Mujoco and Atari environments, highlighting several key insights concerning continuing tasks. Using these testbeds, we also investigate the effectiveness of a method for improving temporal-difference-based RL algorithms in continuing tasks by centering rewards, as introduced by Naik et al. (2024). While their work primarily focused on this method in conjunction with Q-learning, our results extend their findings by demonstrating that this method is effective across a broader range of algorithms, scales to larger tasks, and outperforms two other reward-centering approaches.
format Preprint
id arxiv_https___arxiv_org_abs_2501_06937
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle An Empirical Study of Deep Reinforcement Learning in Continuing Tasks
Wan, Yi
Korenkevych, Dmytro
Zhu, Zheqing
Artificial Intelligence
In reinforcement learning (RL), continuing tasks refer to tasks where the agent-environment interaction is ongoing and can not be broken down into episodes. These tasks are suitable when environment resets are unavailable, agent-controlled, or predefined but where all rewards-including those beyond resets-are critical. These scenarios frequently occur in real-world applications and can not be modeled by episodic tasks. While modern deep RL algorithms have been extensively studied and well understood in episodic tasks, their behavior in continuing tasks remains underexplored. To address this gap, we provide an empirical study of several well-known deep RL algorithms using a suite of continuing task testbeds based on Mujoco and Atari environments, highlighting several key insights concerning continuing tasks. Using these testbeds, we also investigate the effectiveness of a method for improving temporal-difference-based RL algorithms in continuing tasks by centering rewards, as introduced by Naik et al. (2024). While their work primarily focused on this method in conjunction with Q-learning, our results extend their findings by demonstrating that this method is effective across a broader range of algorithms, scales to larger tasks, and outperforms two other reward-centering approaches.
title An Empirical Study of Deep Reinforcement Learning in Continuing Tasks
topic Artificial Intelligence
url https://arxiv.org/abs/2501.06937