AI Agents

Search-R2: Enhancing Search-Integrated Reasoning via Actor-Refiner Collaboration

BBowei HeMMinda HuZZenan XuHHongru WangLLicheng ZongYYankai ChenCChen MaXXue LiuPPluto ZhouIIrwin King
Published
February 3, 2026
Authors
10

Abstract

Search-integrated reasoning enables language agents to transcend static parametric knowledge by actively querying external sources. However, training these agents via reinforcement learning is hindered by the multi-scale credit assignment problem: existing methods typically rely on sparse, trajectory-level rewards that fail to distinguish between high-quality reasoning and fortuitous guesses, leading to redundant or misleading search behaviors. To address this, we propose Search-R2, a novel Actor-Refiner collaboration framework that enhances reasoning through targeted intervention, with both components jointly optimized during training. Our approach decomposes the generation process into an Actor, which produces initial reasoning trajectories, and a Meta-Refiner, which selectively diagnoses and repairs flawed steps via a 'cut-and-regenerate' mechanism. To provide fine-grained supervision, we introduce a hybrid reward design that couples outcome correctness with a dense process reward quantifying the information density of retrieved evidence. Theoretically, we formalize the Actor-Refiner interaction as a smoothed mixture policy, proving that selective correction yields strict performance gains over strong baselines. Extensive experiments across various general and multi-hop QA datasets demonstrate that Search-R2 consistently outperforms strong RAG and RL-based baselines across model scales, achieving superior reasoning accuracy with minimal overhead.

Keywords

reinforcement learningsearch-integrated reasoningActor-Refiner collaborationmulti-scale credit assignmenttrajectory-level rewardsdense process rewardhybrid reward designcut-and-regenerate mechanismsmoothed mixture policygeneral QAmulti-hop QA

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