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OThink-SRR1: Search, Refine and Reasoning with Reinforced Learning for Large Language Models

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Retrieval-Augmented Generation (RAG) expands the knowledge of Large Language Models (LLMs), yet current static retrieval methods struggle with complex, multi-hop problems. While recent dynamic retrieval strategies offer improvements, they face two key challenges: 1) irrelevant retrieved noise can misdirect the reasoning process, and 2) processing full documents incurs prohibitive computational and latency costs. To address these issues, we propose OThink-SRR1, a framework that enhances large models with an iterative Search-Refine-Reason process trained via reinforcement learning. Its core Refine stage distills retrieved documents into concise, relevant facts before reasoning. We introduce GRPO-IR, an end-to-end reinforcement learning algorithm that rewards accurate evidence identification while penalizing excessive retrievals, thus training the model to be both focused and efficient. Experiments on four multi-hop QA benchmarks show our approach achieves superior accuracy over strong baselines while using fewer retrieval steps and tokens. This positions OThink-SRR1 as a potent foundational model for information-seeking agents.

Haijian Liang, Zenghao Niu, Junjie Wu, Changwang Zhang, Wangchunshu Zhou, Jun Wang• 2026

Related benchmarks

TaskDatasetResultRank
Multi-hop Question AnsweringHotpotQA (test)
F150.55
311
Multi-hop Question AnsweringMuSiQue (test)
F129.85
128
Multi-hop Question AnsweringBamboogle (test)
EM44
98
Multi-hop Question Answering2Wiki (test)
F1 Score49.33
34
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