📄 论文总结
WebWeaver:通过动态大纲构建网络规模证据以支持开放式深度研究 / WebWeaver: Structuring Web-Scale Evidence with Dynamic Outlines for Open-Ended Deep Research
1️⃣ 一句话总结
这篇论文提出了一个名为WebWeaver的双智能体框架,通过模拟人类研究过程,动态规划与证据收集相结合,有效解决了开放式深度研究中信息冗余、引用不准确和幻觉问题,从而生成结构清晰、可信赖的研究报告。
This paper tackles \textbf{open-ended deep research (OEDR)}, a complex challenge where AI agents must synthesize vast web-scale information into insightful reports. Current approaches are plagued by dual-fold limitations: static research pipelines that decouple planning from evidence acquisition and monolithic generation paradigms that include redundant, irrelevant evidence, suffering from hallucination issues and low citation accuracy. To address these challenges, we introduce \textbf{WebWeaver}, a novel dual-agent framework that emulates the human research process. The planner operates in a dynamic cycle, iteratively interleaving evidence acquisition with outline optimization to produce a comprehensive, citation-grounded outline linking to a memory bank of evidence. The writer then executes a hierarchical retrieval and writing process, composing the report section by section. By performing targeted retrieval of only the necessary evidence from the memory bank via citations for each part, it effectively mitigates long-context issues and citation hallucinations. Our framework establishes a new state-of-the-art across major OEDR benchmarks, including DeepResearch Bench, DeepConsult, and DeepResearchGym. These results validate our human-centric, iterative methodology, demonstrating that adaptive planning and focused synthesis are crucial for producing comprehensive, trusted, and well-structured reports.
WebWeaver:通过动态大纲构建网络规模证据以支持开放式深度研究 / WebWeaver: Structuring Web-Scale Evidence with Dynamic Outlines for Open-Ended Deep Research
这篇论文提出了一个名为WebWeaver的双智能体框架,通过模拟人类研究过程,动态规划与证据收集相结合,有效解决了开放式深度研究中信息冗余、引用不准确和幻觉问题,从而生成结构清晰、可信赖的研究报告。