探索性分析:从非结构化学术数据中提取材料科学知识

Xintong Zhao, Jane Greenberg, V. Meschke, E. Toberer, Xiaohua Hu
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引用次数: 3

摘要

由于数字技术的发展,学术文献的产出显著增加,这给包括材料科学在内的各个学科的研究人员带来了挑战,因为不可能手动阅读和提取数百万已发表的文献中的知识。本研究的目的是通过探索材料科学中的知识提取来解决这一挑战,并将其应用于数字学术。最重要的目标是帮助读者了解材料科学中的状态知识提取。设计/方法/方法作者对22篇文章的样本进行了两部分分析,比较了材料科学奖学金的知识提取方法;然后比较了基于本体的知识抽取方法HIVE-4-MAT和命名实体识别(NER)应用程序MatScholar。本文首先介绍了知识抽取的背景,然后介绍了知识抽取的三个层次(基于本体的、NER的和关系抽取的),然后介绍了研究目标和方法。研究结果表明,研究人员需要考虑推进知识提取的三个关键需求:需要以材料科学为重点的语料库;研究人员需要确定研究的范围,需要了解不同知识提取方法之间的权衡。本文还指出了随着关系提取和本体可用性的增加,未来材料科学研究的潜力。原创性/价值据作者所知,材料科学中知识提取的研究很少。这项工作为这一尚未充分开发的研究领域做出了重要贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An exploratory analysis: extracting materials science knowledge from unstructured scholarly data
Purpose The output of academic literature has increased significantly due to digital technology, presenting researchers with a challenge across every discipline, including materials science, as it is impossible to manually read and extract knowledge from millions of published literature. The purpose of this study is to address this challenge by exploring knowledge extraction in materials science, as applied to digital scholarship. An overriding goal is to help inform readers about the status knowledge extraction in materials science. Design/methodology/approach The authors conducted a two-part analysis, comparing knowledge extraction methods applied materials science scholarship, across a sample of 22 articles; followed by a comparison of HIVE-4-MAT, an ontology-based knowledge extraction and MatScholar, a named entity recognition (NER) application. This paper covers contextual background, and a review of three tiers of knowledge extraction (ontology-based, NER and relation extraction), followed by the research goals and approach. Findings The results indicate three key needs for researchers to consider for advancing knowledge extraction: the need for materials science focused corpora; the need for researchers to define the scope of the research being pursued, and the need to understand the tradeoffs among different knowledge extraction methods. This paper also points to future material science research potential with relation extraction and increased availability of ontologies. Originality/value To the best of the authors’ knowledge, there are very few studies examining knowledge extraction in materials science. This work makes an important contribution to this underexplored research area.
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