论文标题
从调查文章表中创建学术知识图
Creating a Scholarly Knowledge Graph from Survey Article Tables
论文作者
论文摘要
由于缺乏结构,机器几乎无法获得学术知识。已经提出了学术知识图作为解决方案。创建这样的知识图需要手动努力和域专家,因此耗时且繁琐。在这项工作中,我们提出了一种人类的方法,用于构建文献调查文章的学术知识图。调查文章通常包含手动策划和高质量的表格信息,这些信息总结了科学文献中发表的发现。因此,调查文章是生成学术知识图的绝佳资源。提出的方法由五个步骤组成,其中表和参考文献是从PDF文章中提取的,表格格式化并最终摄入到知识图中。为了评估该方法,该图中已经进口了92篇包含160个调查表的调查文章。总共使用了呈现的方法将2,626篇论文添加到知识图中。结果证明了我们方法的可行性,但也表明需要手动努力,从而强调了人类专家的重要作用。
Due to the lack of structure, scholarly knowledge remains hardly accessible for machines. Scholarly knowledge graphs have been proposed as a solution. Creating such a knowledge graph requires manual effort and domain experts, and is therefore time-consuming and cumbersome. In this work, we present a human-in-the-loop methodology used to build a scholarly knowledge graph leveraging literature survey articles. Survey articles often contain manually curated and high-quality tabular information that summarizes findings published in the scientific literature. Consequently, survey articles are an excellent resource for generating a scholarly knowledge graph. The presented methodology consists of five steps, in which tables and references are extracted from PDF articles, tables are formatted and finally ingested into the knowledge graph. To evaluate the methodology, 92 survey articles, containing 160 survey tables, have been imported in the graph. In total, 2,626 papers have been added to the knowledge graph using the presented methodology. The results demonstrate the feasibility of our approach, but also indicate that manual effort is required and thus underscore the important role of human experts.