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Main Authors: Liu, Jiabei, Mao, Wenyu, Tan, Junfei, Shen, Chunxu, Yi, Lingling, Wu, Jiancan, Wang, Xiang
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.13534
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author Liu, Jiabei
Mao, Wenyu
Tan, Junfei
Shen, Chunxu
Yi, Lingling
Wu, Jiancan
Wang, Xiang
author_facet Liu, Jiabei
Mao, Wenyu
Tan, Junfei
Shen, Chunxu
Yi, Lingling
Wu, Jiancan
Wang, Xiang
contents Deep search agents have proven effective in enhancing LLMs by retrieving external knowledge during multi-step reasoning. However, existing methods often generate a single query for retrieval at each reasoning step, limiting information coverage and introducing high noise. This may result in low signal-to-noise ratios (SNR) during search, degrading reasoning accuracy and leading to unnecessary reasoning steps. In this paper, we introduce MultiSearch, an RL-based framework that addresses these limitations through multi-query retrieval and explicit merging of retrieved information. At each reasoning step, MultiSearch generates queries from multiple perspectives and retrieves external information in parallel, expanding the scope of relevant information and mitigating the reliance on any single retrieval result. Then, the agent consolidates and refines retrieved information at the merging process, improving the SNR and ensuring more accurate reasoning. Additionally, we propose a reinforcement learning framework with a multi-process reward design to optimize agents for both multi-query retrieval and information consolidation. Extensive experiments on seven benchmarks demonstrate that MultiSearch outperforms baseline methods, enhancing the SNR of retrieval and improving reasoning performance in question-answering tasks.
format Preprint
id arxiv_https___arxiv_org_abs_2605_13534
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Scaling Retrieval-Augmented Reasoning with Parallel Search and Explicit Merging
Liu, Jiabei
Mao, Wenyu
Tan, Junfei
Shen, Chunxu
Yi, Lingling
Wu, Jiancan
Wang, Xiang
Artificial Intelligence
Deep search agents have proven effective in enhancing LLMs by retrieving external knowledge during multi-step reasoning. However, existing methods often generate a single query for retrieval at each reasoning step, limiting information coverage and introducing high noise. This may result in low signal-to-noise ratios (SNR) during search, degrading reasoning accuracy and leading to unnecessary reasoning steps. In this paper, we introduce MultiSearch, an RL-based framework that addresses these limitations through multi-query retrieval and explicit merging of retrieved information. At each reasoning step, MultiSearch generates queries from multiple perspectives and retrieves external information in parallel, expanding the scope of relevant information and mitigating the reliance on any single retrieval result. Then, the agent consolidates and refines retrieved information at the merging process, improving the SNR and ensuring more accurate reasoning. Additionally, we propose a reinforcement learning framework with a multi-process reward design to optimize agents for both multi-query retrieval and information consolidation. Extensive experiments on seven benchmarks demonstrate that MultiSearch outperforms baseline methods, enhancing the SNR of retrieval and improving reasoning performance in question-answering tasks.
title Scaling Retrieval-Augmented Reasoning with Parallel Search and Explicit Merging
topic Artificial Intelligence
url https://arxiv.org/abs/2605.13534