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arXiv 提交日期: 2026-05-14
📄 Abstract - The Scientific Contribution Graph: Automated Literature-based Technological Roadmapping at Scale

Scientific contributions rarely develop in isolation, but instead build upon prior discoveries. We formulate the task of automated technological roadmapping as extracting scientific contributions from scholarly articles and linking them to their prerequisites. We present the Scientific Contribution Graph, a large-scale AI/NLP-domain resource containing 2 million detailed scientific contributions extracted from 230k open-access papers and connected by 12.5 million prerequisite edges. We further introduce scientific prerequisite prediction, a scientific discovery task in which models predict which existing technologies can enable future discoveries, and show that contemporary models are rapidly improving on this task, reaching 0.48 MAP when evaluated using temporally filtered backtesting. We anticipate technological roadmapping resources such as this will support scientific impact assessment and automated scientific discovery.

顶级标签: natural language processing machine learning data
详细标签: scientific contribution graph technological roadmapping prerequisite prediction scientific discovery large-scale resource 或 搜索:

科学贡献图谱:基于文献的大规模自动化技术路线规划 / The Scientific Contribution Graph: Automated Literature-based Technological Roadmapping at Scale


1️⃣ 一句话总结

该论文提出了一个名为“科学贡献图谱”的大规模资源,它从大量开放获取论文中提取出数百万条科学贡献,并将它们与其前置条件自动关联,从而让AI模型能够预测哪些现有技术可能催生未来的发现,为自动化技术路线规划和科学影响评估提供了新工具。

源自 arXiv: 2605.15011