SciSage: A Multi-Agent Framework for High-Quality Scientific Survey Generation
SciSage: A Multi-Agent Framework for High-Quality Scientific Survey Generation
The rapid growth of scientific literature demands robust tools for automated survey-generation. However, current large language model (LLM)-based methods often lack in-depth analysis, structural coherence, and reliable citations. To address these limitations, we introduce SciSage, a multi-agent framework employing a reflect-when-you-write paradigm. SciSage features a hierarchical Reflector agent that critically evaluates drafts at outline, section, and document levels, collaborating with specialized agents for query interpretation, content retrieval, and refinement. We also release SurveyScope, a rigorously curated benchmark of 46 high-impact papers (2020-2025) across 11 computer science domains, with strict recency and citation-based quality controls. Evaluations demonstrate that SciSage outperforms state-of-the-art baselines (LLM x MapReduce-V2, AutoSurvey), achieving +1.73 points in document coherence and +32% in citation F1 scores. Human evaluations reveal mixed outcomes (3 wins vs. 7 losses against human-written surveys), but highlight SciSage's strengths in topical breadth and retrieval efficiency. Overall, SciSage offers a promising foundation for research-assistive writing tools.
Xiaofeng Shi、Qian Kou、Yuduo Li、Ning Tang、Jinxin Xie、Longbin Yu、Songjing Wang、Hua Zhou
科学、科学研究计算技术、计算机技术
Xiaofeng Shi,Qian Kou,Yuduo Li,Ning Tang,Jinxin Xie,Longbin Yu,Songjing Wang,Hua Zhou.SciSage: A Multi-Agent Framework for High-Quality Scientific Survey Generation[EB/OL].(2025-06-14)[2025-07-16].https://arxiv.org/abs/2506.12689.点此复制
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