Automatic Knowledge Base Construction from Scholarly Documents

Rabah A. Al-Zaidy, C. Lee Giles
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引用次数: 7

Abstract

The continuing growth of published scholarly content on the web ensures the availability of the most recent scientific findings to researchers. Scholarly documents, such as research articles, are easily accessed by using academic search engines that are built on large repositories of scholarly documents. Scientific information extraction from documents into a structured knowledge graph representation facilitates automated machine understanding of a document's content. Traditional information extraction approaches, that either require training samples or a preexisting knowledge base to assist in the extraction, can be challenging when applied to large repositories of digital documents. Labeled training examples for such large scale are difficult to obtain for such datasets. Also, most available knowledge bases are built from web data and do not have sufficient coverage to include concepts found in scientific articles. In this paper we aim to construct a knowledge graph from scholarly documents while addressing both these issues. We propose a fully automatic, unsupervised system for scientific information extraction that does not build on an existing knowledge base and avoids manually-tagged training data. We describe and evaluate a constructed taxonomy that contains over 15k entities resulting from applying our approach to 10k documents.
基于学术文献的知识库自动构建
网络上发表的学术内容的持续增长确保了研究人员获得最新的科学发现。学术文档,例如研究文章,可以通过使用建立在大型学术文档存储库上的学术搜索引擎轻松访问。科学信息从文档中提取成结构化的知识图表示,有助于机器自动理解文档的内容。传统的信息提取方法要么需要训练样本,要么需要预先存在的知识库来辅助提取,当应用于大型数字文档存储库时,这种方法可能具有挑战性。对于这样的数据集,很难获得如此大规模的标记训练样例。此外,大多数可用的知识库都是基于网络数据构建的,没有足够的覆盖范围来包括科学文章中的概念。在本文中,我们旨在从学术文献中构建一个知识图谱,同时解决这两个问题。我们提出了一个完全自动的、无监督的科学信息提取系统,它不建立在现有的知识库上,并且避免了手动标记训练数据。我们描述并评估了一个构造的分类法,该分类法包含超过15k个实体,这些实体是将我们的方法应用于10k个文档而产生的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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