Framework for entity extraction with verification: application to inference of data set usage in research publications

Svetlozar Nestorov, Dinko Bacic, N. Jukic, M. Malliaris
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Abstract

Purpose The purpose of this paper is to propose an extensible framework for extracting data set usage from research articles. Design/methodology/approach The framework uses a training set of manually labeled examples to identify word features surrounding data set usage references. Using the word features and general entity identifiers, candidate data sets are extracted and scored separately at the sentence and document levels. Finally, the extracted data set references can be verified by the authors using a web-based verification module. Findings This paper successfully addresses a significant gap in entity extraction literature by focusing on data set extraction. In the process, this paper: identified an entity-extraction scenario with specific characteristics that enable a multiphase approach, including a feasible author-verification step; defined the search space for word feature identification; defined scoring functions for sentences and documents; and designed a simple web-based author verification step. The framework is successfully tested on 178 articles authored by researchers from a large research organization. Originality/value Whereas previous approaches focused on completely automated large-scale entity recognition from text snippets, the proposed framework is designed for a longer, high-quality text, such as a research publication. The framework includes a verification module that enables the request validation of the discovered entities by the authors of the research publications. This module shares some similarities with general crowdsourcing approaches, but the target scenario increases the likelihood of meaningful author participation.
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带有验证的实体抽取框架:在研究出版物中数据集使用推断中的应用
本文的目的是提出一个可扩展的框架,用于从研究文章中提取数据集的使用情况。设计/方法/方法该框架使用一组人工标记的示例来识别围绕数据集用法参考的单词特征。使用单词特征和一般实体标识符,提取候选数据集,并在句子和文档级别分别评分。最后,作者可以使用基于web的验证模块对提取的数据集引用进行验证。研究结果:本文通过关注数据集提取,成功地解决了实体提取文献中的一个重大空白。在此过程中,本文确定了一个具有特定特征的实体提取场景,该场景支持多阶段方法,包括可行的作者验证步骤;定义了词特征识别的搜索空间;定义了句子和文档的评分函数;并设计了一个简单的基于web的作者验证步骤。该框架在某大型研究机构研究人员撰写的178篇文章上进行了成功的测试。原创性/价值先前的方法侧重于从文本片段中完全自动化的大规模实体识别,而提出的框架是为更长的高质量文本(如研究出版物)而设计的。该框架包括一个验证模块,该模块允许研究出版物的作者对发现的实体进行请求验证。这个模块与一般的众包方法有一些相似之处,但目标场景增加了作者有意义参与的可能性。
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