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Main Authors: Palenicek, Daniel, Lutter, Michael, Carvalho, João, Dennert, Daniel, Ahmad, Faran, Peters, Jan
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2412.20537
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author Palenicek, Daniel
Lutter, Michael
Carvalho, João
Dennert, Daniel
Ahmad, Faran
Peters, Jan
author_facet Palenicek, Daniel
Lutter, Michael
Carvalho, João
Dennert, Daniel
Ahmad, Faran
Peters, Jan
contents Model-based reinforcement learning aims to increase sample efficiency, but the accuracy of dynamics models and the resulting compounding errors are often seen as key limitations. This paper empirically investigates potential sample efficiency gains from improved dynamics models in model-based value expansion methods. Our study reveals two key findings when using oracle dynamics models to eliminate compounding errors. First, longer rollout horizons enhance sample efficiency, but the improvements quickly diminish with each additional expansion step. Second, increased model accuracy only marginally improves sample efficiency compared to learned models with identical horizons. These diminishing returns in sample efficiency are particularly noteworthy when compared to model-free value expansion methods. These model-free algorithms achieve comparable performance without the computational overhead. Our results suggest that the limitation of model-based value expansion methods cannot be attributed to model accuracy. Although higher accuracy is beneficial, even perfect models do not provide unrivaled sample efficiency. Therefore, the bottleneck exists elsewhere. These results challenge the common assumption that model accuracy is the primary constraint in model-based reinforcement learning.
format Preprint
id arxiv_https___arxiv_org_abs_2412_20537
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Diminishing Return of Value Expansion Methods
Palenicek, Daniel
Lutter, Michael
Carvalho, João
Dennert, Daniel
Ahmad, Faran
Peters, Jan
Machine Learning
Model-based reinforcement learning aims to increase sample efficiency, but the accuracy of dynamics models and the resulting compounding errors are often seen as key limitations. This paper empirically investigates potential sample efficiency gains from improved dynamics models in model-based value expansion methods. Our study reveals two key findings when using oracle dynamics models to eliminate compounding errors. First, longer rollout horizons enhance sample efficiency, but the improvements quickly diminish with each additional expansion step. Second, increased model accuracy only marginally improves sample efficiency compared to learned models with identical horizons. These diminishing returns in sample efficiency are particularly noteworthy when compared to model-free value expansion methods. These model-free algorithms achieve comparable performance without the computational overhead. Our results suggest that the limitation of model-based value expansion methods cannot be attributed to model accuracy. Although higher accuracy is beneficial, even perfect models do not provide unrivaled sample efficiency. Therefore, the bottleneck exists elsewhere. These results challenge the common assumption that model accuracy is the primary constraint in model-based reinforcement learning.
title Diminishing Return of Value Expansion Methods
topic Machine Learning
url https://arxiv.org/abs/2412.20537