Saved in:
Bibliographic Details
Main Authors: Nasir, Azkaa, Dossa, Fatima, Atif, Muhammad Ahmed, Shaikh, Mohammad Shahid
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2602.09810
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866911439190491136
author Nasir, Azkaa
Dossa, Fatima
Atif, Muhammad Ahmed
Shaikh, Mohammad Shahid
author_facet Nasir, Azkaa
Dossa, Fatima
Atif, Muhammad Ahmed
Shaikh, Mohammad Shahid
contents Transfer learning in deep reinforcement learning is often motivated by improved stability and reduced training cost, but it can also fail under substantial domain shift. This paper presents a controlled empirical study examining how architectural differences between Double Deep Q-Networks (DDQN) and Dueling DQN influence transfer behavior across environments. Using CartPole as a source task and LunarLander as a structurally distinct target task, we evaluate a fixed layer-wise representation transfer protocol under identical hyperparameters and training conditions, with baseline agents trained from scratch used to contextualize transfer effects. Empirical results show that DDQN consistently avoids negative transfer under the examined setup and maintains learning dynamics comparable to baseline performance in the target environment. In contrast, Dueling DQN consistently exhibits negative transfer under identical conditions, characterized by degraded rewards and unstable optimization behavior. Statistical analysis across multiple random seeds confirms a significant performance gap under transfer. These findings suggest that architectural inductive bias is strongly associated with robustness to cross-environment transfer in value-based deep reinforcement learning under the examined transfer protocol.
format Preprint
id arxiv_https___arxiv_org_abs_2602_09810
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle A Controlled Study of Double DQN and Dueling DQN Under Cross-Environment Transfer
Nasir, Azkaa
Dossa, Fatima
Atif, Muhammad Ahmed
Shaikh, Mohammad Shahid
Machine Learning
Artificial Intelligence
Transfer learning in deep reinforcement learning is often motivated by improved stability and reduced training cost, but it can also fail under substantial domain shift. This paper presents a controlled empirical study examining how architectural differences between Double Deep Q-Networks (DDQN) and Dueling DQN influence transfer behavior across environments. Using CartPole as a source task and LunarLander as a structurally distinct target task, we evaluate a fixed layer-wise representation transfer protocol under identical hyperparameters and training conditions, with baseline agents trained from scratch used to contextualize transfer effects. Empirical results show that DDQN consistently avoids negative transfer under the examined setup and maintains learning dynamics comparable to baseline performance in the target environment. In contrast, Dueling DQN consistently exhibits negative transfer under identical conditions, characterized by degraded rewards and unstable optimization behavior. Statistical analysis across multiple random seeds confirms a significant performance gap under transfer. These findings suggest that architectural inductive bias is strongly associated with robustness to cross-environment transfer in value-based deep reinforcement learning under the examined transfer protocol.
title A Controlled Study of Double DQN and Dueling DQN Under Cross-Environment Transfer
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2602.09810