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Main Authors: Yang, Pei, Zhang, Ke, Wang, Ji, Chen, Xiao, Tang, Yuxin, Yang, Eric, Ai, Lynn, Shi, Bill
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2511.16202
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author Yang, Pei
Zhang, Ke
Wang, Ji
Chen, Xiao
Tang, Yuxin
Yang, Eric
Ai, Lynn
Shi, Bill
author_facet Yang, Pei
Zhang, Ke
Wang, Ji
Chen, Xiao
Tang, Yuxin
Yang, Eric
Ai, Lynn
Shi, Bill
contents We present CRM (Multi-Agent Collaborative Reward Model), a framework that replaces a single black-box reward model with a coordinated team of specialist evaluators to improve robustness and interpretability in RLHF. Conventional reward models struggle to jointly optimize multiple, sometimes conflicting, preference dimensions (e.g., factuality, helpfulness, safety) and offer limited transparency into why a score is assigned. CRM addresses these issues by decomposing preference evaluation into domain-specific agents that each produce partial signals, alongside global evaluators such as ranker-based and embedding-similarity rewards. A centralized aggregator fuses these signals at each timestep, balancing factors like step-wise correctness, multi-agent agreement, and repetition penalties, yielding a single training reward compatible with standard RL pipelines. The policy is optimized with advantage-based updates (e.g., GAE), while a value model regresses to the aggregated reward, enabling multi-perspective reward shaping without requiring additional human annotations beyond those used to train the evaluators. To support training and assessment, we introduce rewardBench, a benchmark and training suite aligned with the collaborative structure of CRM. Together, CRM and rewardBench provide a practical, modular path to more transparent reward modeling and more stable optimization.
format Preprint
id arxiv_https___arxiv_org_abs_2511_16202
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Multi-Agent Collaborative Reward Design for Enhancing Reasoning in Reinforcement Learning
Yang, Pei
Zhang, Ke
Wang, Ji
Chen, Xiao
Tang, Yuxin
Yang, Eric
Ai, Lynn
Shi, Bill
Artificial Intelligence
We present CRM (Multi-Agent Collaborative Reward Model), a framework that replaces a single black-box reward model with a coordinated team of specialist evaluators to improve robustness and interpretability in RLHF. Conventional reward models struggle to jointly optimize multiple, sometimes conflicting, preference dimensions (e.g., factuality, helpfulness, safety) and offer limited transparency into why a score is assigned. CRM addresses these issues by decomposing preference evaluation into domain-specific agents that each produce partial signals, alongside global evaluators such as ranker-based and embedding-similarity rewards. A centralized aggregator fuses these signals at each timestep, balancing factors like step-wise correctness, multi-agent agreement, and repetition penalties, yielding a single training reward compatible with standard RL pipelines. The policy is optimized with advantage-based updates (e.g., GAE), while a value model regresses to the aggregated reward, enabling multi-perspective reward shaping without requiring additional human annotations beyond those used to train the evaluators. To support training and assessment, we introduce rewardBench, a benchmark and training suite aligned with the collaborative structure of CRM. Together, CRM and rewardBench provide a practical, modular path to more transparent reward modeling and more stable optimization.
title Multi-Agent Collaborative Reward Design for Enhancing Reasoning in Reinforcement Learning
topic Artificial Intelligence
url https://arxiv.org/abs/2511.16202