Saved in:
Bibliographic Details
Main Authors: Martinez, Fernando, Li, Tao, Lu, Yingdong, Chen, Juntao
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2508.07452
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866912856650285056
author Martinez, Fernando
Li, Tao
Lu, Yingdong
Chen, Juntao
author_facet Martinez, Fernando
Li, Tao
Lu, Yingdong
Chen, Juntao
contents Deep Q-learning jointly learns representations and values within monolithic networks, promising beneficial co-adaptation between features and value estimates. Although this architecture has attained substantial success, the coupling between representation and value learning creates instability as representations must constantly adapt to non-stationary value targets, while value estimates depend on these shifting representations. This is compounded by high variance in bootstrapped targets, which causes bias in value estimation in off-policy methods. We introduce Stackelberg Coupled Representation and Reinforcement Learning (SCORER), a framework for value-based RL that views representation and Q-learning as two strategic agents in a hierarchical game. SCORER models the Q-function as the leader, which commits to its strategy by updating less frequently, while the perception network (encoder) acts as the follower, adapting more frequently to learn representations that minimize Bellman error variance given the leader's committed strategy. Through this division of labor, the Q-function minimizes MSBE while perception minimizes its variance, thereby reducing bias accordingly, with asymmetric updates allowing stable co-adaptation, unlike simultaneous parameter updates in monolithic solutions. Our proposed SCORER framework leads to a bi-level optimization problem whose solution is approximated by a two-timescale algorithm that creates an asymmetric learning dynamic between the two players. Extensive experiments on DQN and its variants demonstrate that gains stem from algorithmic insight rather than model complexity.
format Preprint
id arxiv_https___arxiv_org_abs_2508_07452
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Stackelberg Coupling of Online Representation Learning and Reinforcement Learning
Martinez, Fernando
Li, Tao
Lu, Yingdong
Chen, Juntao
Machine Learning
Artificial Intelligence
Deep Q-learning jointly learns representations and values within monolithic networks, promising beneficial co-adaptation between features and value estimates. Although this architecture has attained substantial success, the coupling between representation and value learning creates instability as representations must constantly adapt to non-stationary value targets, while value estimates depend on these shifting representations. This is compounded by high variance in bootstrapped targets, which causes bias in value estimation in off-policy methods. We introduce Stackelberg Coupled Representation and Reinforcement Learning (SCORER), a framework for value-based RL that views representation and Q-learning as two strategic agents in a hierarchical game. SCORER models the Q-function as the leader, which commits to its strategy by updating less frequently, while the perception network (encoder) acts as the follower, adapting more frequently to learn representations that minimize Bellman error variance given the leader's committed strategy. Through this division of labor, the Q-function minimizes MSBE while perception minimizes its variance, thereby reducing bias accordingly, with asymmetric updates allowing stable co-adaptation, unlike simultaneous parameter updates in monolithic solutions. Our proposed SCORER framework leads to a bi-level optimization problem whose solution is approximated by a two-timescale algorithm that creates an asymmetric learning dynamic between the two players. Extensive experiments on DQN and its variants demonstrate that gains stem from algorithmic insight rather than model complexity.
title Stackelberg Coupling of Online Representation Learning and Reinforcement Learning
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2508.07452