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CRPO: Character-centric Group Relative Policy Optimization for Role-aware Reasoning in Role-playing Agents

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Recent advancements in Reinforcement Learning (RL), particularly Group Relative Policy Optimization (GRPO), have significantly enhanced the reasoning capabilities of Large Language Models. However, applying these problem-centric optimization methods to role-playing agents often leads to a loss of character fidelity and style collapse, as they prioritize context-specific utility over persona alignment. To address this, we propose Character-Centric Group Relative Policy Optimization (CRPO), a framework designed to realign RL objectives with the role-playing task. CRPO improves character distinctiveness through three mechanisms: decoupling task logic from stylistic rewards to resolve gradient conflicts, dynamically adapting optimization constraints based on character complexity, and utilizing generic responses as negative baselines to prevent the model from reverting to a common distribution. Extensive experiments demonstrate that CRPO outperforms existing methods in consistency, emotion and others.

Yihong Tang, Kehai Chen, Liang Yue, Benyou Wang, Min Zhang• 2026

Related benchmarks

TaskDatasetResultRank
Role-play dialogue comprehensionSocialBench
Role Knowledge96.6
61
Role-playingCharacterBench
MC4.525
50
Role-playingCharacterBench latest (full)
Overall Score4.525
47
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