SciAtlas:面向自动化科学研究的大规模知识图谱
阅读原文· arxiv.orgSciAtlas 是一个大规模、多学科、异构的学术资源知识图谱,旨在为自动化科学研究提供“认知地图”。它整合了26个学科的超过4300万篇论文,包含1.57亿实体和30亿三元组,构建了可打破学科壁垒的结构化拓扑认知底座。为克服现有检索工具缺乏拓扑推理能力的问题,其开发了具备三路协同召回和图重排序功能的神经符号检索算法,实现从语义匹配到确定性关联发现的过渡。应用方向包括文献综述、研究趋势综合、想法定位与学术轨迹探索,旨在以结构化方式赋能科研全流程并显著降低推理成本。相关接口已在GitHub开源。
The exponential growth of global academic output has confronted researchers and AI agents with an unprecedented `information explosion,'' where fragmented and unstructured knowledge organization impedes deep interdisciplinary integration. Current academic retrieval tools predominantly rely on superficial keyword matching or vector-space semantic retrieval, which lack the topological reasoning capabilities required to navigate complex logical connections. Agentic deep-research-based frameworks are often prone to logical hallucinations and consuming high inference costs. To bridge this gap, in this report, we introduce SciAtlas, a large-scale, multi-disciplinary, heterogeneous academic resource knowledge graph designed as a panoramic scientific evolution network. By integrating over 43M papers from 26 disciplines, and a total of 157M entities and 3B triplets, SciAtlas provides a structured topological cognitive substrate that dismantles disciplinary barriers and furnishes AI agents with a global perspective. Furthermore, we develop a neuro-symbolic retrieval algorithm featuring tri-path collaborative recall and graph reranking, achieving a seamless transition from simple semantic matching to deterministic association discovery. We also present key application directions of SciAtlas, including literature review, automated research trend synthesis, idea positioning, and academic trajectory exploration, to demonstrate that SciAtlas can serve as an effective `cognitive map'' to empower the full loop of automated scientific research while significantly reducing reasoning costs. We have released the interfaces for KG retrieval and various downstream tasks in our GitHub repo.