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Main Authors: Lan, Hengzhi, Yu, Yue, Qian, Li, Peng, Li, Wu, Jie, Liu, Wei, Luan, Jian, Bai, Ting
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2512.06653
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author Lan, Hengzhi
Yu, Yue
Qian, Li
Peng, Li
Wu, Jie
Liu, Wei
Luan, Jian
Bai, Ting
author_facet Lan, Hengzhi
Yu, Yue
Qian, Li
Peng, Li
Wu, Jie
Liu, Wei
Luan, Jian
Bai, Ting
contents DeepSearch paradigms have become a core enabler for deep reasoning models, allowing them to invoke external search tools to access up-to-date, domain-specific knowledge beyond parametric boundaries, thereby enhancing the depth and factual reliability of reasoning. Building upon this foundation, recent advances in reinforcement learning (RL) have further empowered models to autonomously and strategically control search tool usage, optimizing when and how to query external knowledge sources. Yet, these RL-driven DeepSearch systems often reveal a see-saw trade-off between accuracy and efficiency-frequent tool invocations can improve factual correctness but lead to unnecessary computational overhead and diminished efficiency. To address this challenge, we propose LightSearcher, an efficient RL framework that incorporates textual experiential memory by learning contrastive reasoning trajectories to generate interpretable summaries of successful reasoning patterns. In addition, it employs an adaptive reward shaping mechanism that penalizes redundant tool calls only in correct-answer scenarios. This design effectively balances the inherent accuracy-efficiency trade-off in DeepSearch paradigms. Experiments on four multi-hop QA benchmarks show that LightSearcher maintains accuracy comparable to SOTA baseline ReSearch, while reducing search tool invocations by 39.6%, inference time by 48.6%, and token consumption by 21.2%, demonstrating its superior efficiency.
format Preprint
id arxiv_https___arxiv_org_abs_2512_06653
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle LightSearcher: Efficient DeepSearch via Experiential Memory
Lan, Hengzhi
Yu, Yue
Qian, Li
Peng, Li
Wu, Jie
Liu, Wei
Luan, Jian
Bai, Ting
Artificial Intelligence
DeepSearch paradigms have become a core enabler for deep reasoning models, allowing them to invoke external search tools to access up-to-date, domain-specific knowledge beyond parametric boundaries, thereby enhancing the depth and factual reliability of reasoning. Building upon this foundation, recent advances in reinforcement learning (RL) have further empowered models to autonomously and strategically control search tool usage, optimizing when and how to query external knowledge sources. Yet, these RL-driven DeepSearch systems often reveal a see-saw trade-off between accuracy and efficiency-frequent tool invocations can improve factual correctness but lead to unnecessary computational overhead and diminished efficiency. To address this challenge, we propose LightSearcher, an efficient RL framework that incorporates textual experiential memory by learning contrastive reasoning trajectories to generate interpretable summaries of successful reasoning patterns. In addition, it employs an adaptive reward shaping mechanism that penalizes redundant tool calls only in correct-answer scenarios. This design effectively balances the inherent accuracy-efficiency trade-off in DeepSearch paradigms. Experiments on four multi-hop QA benchmarks show that LightSearcher maintains accuracy comparable to SOTA baseline ReSearch, while reducing search tool invocations by 39.6%, inference time by 48.6%, and token consumption by 21.2%, demonstrating its superior efficiency.
title LightSearcher: Efficient DeepSearch via Experiential Memory
topic Artificial Intelligence
url https://arxiv.org/abs/2512.06653