LLM Reasoning 相关度: 7/10

DAGverse: Building Document-Grounded Semantic DAGs from Scientific Papers

Shu Wan, Saketh Vishnubhatla, Iskander Kushbay, Tom Heffernan, Aaron Belikoff, Raha Moraffah, Huan Liu
arXiv: 2603.25293v1 发布: 2026-03-26 更新: 2026-03-26

AI 摘要

DAGverse构建框架,利用科学论文提取文档级的语义DAG,并发布了包含108个DAG的数据集。

主要贡献

  • 提出DAGverse框架,用于半自动构建文档级语义DAG
  • 构建DAGverse-Pipeline,用于高精度语义DAG提取
  • 发布DAGverse-1数据集,包含108个专家验证的语义DAG

方法论

利用包含DAG图的科学论文,通过图分类、重建、语义对齐和验证等步骤,提取语义DAG。

原文摘要

Directed Acyclic Graphs (DAGs) are widely used to represent structured knowledge in scientific and technical domains. However, datasets for real-world DAGs remain scarce because constructing them typically requires expert interpretation of domain documents. We study Doc2SemDAG construction: recovering a preferred semantic DAG from a document together with the cited evidence and context that explain it. This problem is challenging because a document may admit multiple plausible abstractions, the intended structure is often implicit, and the supporting evidence is scattered across prose, equations, captions, and figures. To address these challenges, we leverage scientific papers containing explicit DAG figures as a natural source of supervision. In this setting, the DAG figure provides the DAG structure, while the accompanying text provides context and explanation. We introduce DAGverse, a framework for constructing document-grounded semantic DAGs from online scientific papers. Its core component, DAGverse-Pipeline, is a semi-automatic system designed to produce high-precision semantic DAG examples through figure classification, graph reconstruction, semantic grounding, and validation. As a case study, we test the framework for causal DAGs and release DAGverse-1, a dataset of 108 expert-validated semantic DAGs with graph-level, node-level, and edge-level evidence. Experiments show that DAGverse-Pipeline outperforms existing Vision-Language Models on DAG classification and annotation. DAGverse provides a foundation for document-grounded DAG benchmarks and opens new directions for studying structured reasoning grounded in real-world evidence.

标签

知识图谱 信息抽取 文档理解 科学文献挖掘 DAG

arXiv 分类

cs.AI cs.CL