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Main Authors: Ding, Shutong, Zhou, Yimiao, Hu, Ke, Pan, Mokai, Zhong, Shan, Fu, Yanwei, Wang, Jingya, Shi, Ye
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2602.05783
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author Ding, Shutong
Zhou, Yimiao
Hu, Ke
Pan, Mokai
Zhong, Shan
Fu, Yanwei
Wang, Jingya
Shi, Ye
author_facet Ding, Shutong
Zhou, Yimiao
Hu, Ke
Pan, Mokai
Zhong, Shan
Fu, Yanwei
Wang, Jingya
Shi, Ye
contents Recent advances in diffusion-based reinforcement learning (RL) methods have demonstrated promising results in a wide range of continuous control tasks. However, existing works in this field focus on the application of diffusion policies while leaving the diffusion critics unexplored. In fact, since policy optimization fundamentally relies on the critic, accurate value estimation is far more important than policy expressiveness. Furthermore, given the stochasticity of most reinforcement learning tasks, it has been confirmed that the critic is more appropriately depicted with a distributional model. Motivated by these points, we propose a novel distributional RL method with Diffusion Bridge Critics (DBC). DBC directly models the inverse cumulative distribution function (CDF) of the Q value. This allows us to accurately capture the value distribution and prevents it from collapsing into a trivial Gaussian distribution owing to the strong distribution-matching capability of the diffusion bridge. Moreover, we further derive an analytic integral formula to address discretization errors in DBC, which is essential in value estimation. To our knowledge, DBC is the first work to employ the diffusion bridge model as the critic. Notably, DBC is also a plug-and-play component and can be integrated into most existing RL frameworks. Experimental results on MuJoCo robot control benchmarks demonstrate the superiority of DBC compared with previous distributional critic models.
format Preprint
id arxiv_https___arxiv_org_abs_2602_05783
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Distributional Reinforcement Learning with Diffusion Bridge Critics
Ding, Shutong
Zhou, Yimiao
Hu, Ke
Pan, Mokai
Zhong, Shan
Fu, Yanwei
Wang, Jingya
Shi, Ye
Machine Learning
Recent advances in diffusion-based reinforcement learning (RL) methods have demonstrated promising results in a wide range of continuous control tasks. However, existing works in this field focus on the application of diffusion policies while leaving the diffusion critics unexplored. In fact, since policy optimization fundamentally relies on the critic, accurate value estimation is far more important than policy expressiveness. Furthermore, given the stochasticity of most reinforcement learning tasks, it has been confirmed that the critic is more appropriately depicted with a distributional model. Motivated by these points, we propose a novel distributional RL method with Diffusion Bridge Critics (DBC). DBC directly models the inverse cumulative distribution function (CDF) of the Q value. This allows us to accurately capture the value distribution and prevents it from collapsing into a trivial Gaussian distribution owing to the strong distribution-matching capability of the diffusion bridge. Moreover, we further derive an analytic integral formula to address discretization errors in DBC, which is essential in value estimation. To our knowledge, DBC is the first work to employ the diffusion bridge model as the critic. Notably, DBC is also a plug-and-play component and can be integrated into most existing RL frameworks. Experimental results on MuJoCo robot control benchmarks demonstrate the superiority of DBC compared with previous distributional critic models.
title Distributional Reinforcement Learning with Diffusion Bridge Critics
topic Machine Learning
url https://arxiv.org/abs/2602.05783