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Reference Metadata Extraction from Korean Research Papers

机译:韩国研究论文的参考元数据提取

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A large amount of research papers are published in various fields and the ability to accurately extract metadata from a list of references is becoming increasingly important. Moreover, metadata extraction is crucial for measuring the influence of a particular study or researcher. However, it is difficult to automatically extract data from most lists of references because they consist of unstructured strings with bibliographies structured in various formats depending on the proceedings. Thus, this paper presents an effective and accurate method for extracting metadata, such as author name, title, publication year, volume, issue, page numbers, and journal name from heterogeneous references using the conditional random fields model. To conduct an experiment measuring the effectiveness of the proposed model, 1,415 references from 93 different academic papers published in Korea were used and a high accuracy of 97.10% was obtained.
机译:在各个领域发表了大量研究论文,从参考文献列表中准确提取元数据的能力变得越来越重要。此外,元数据提取对于衡量特定研究或研究人员的影响至关重要。但是,很难从大多数参考文献列表中自动提取数据,因为它们由非结构化字符串组成,其书目根据程序的不同以各种格式进行结构化。因此,本文提出了一种有效且准确的方法,该方法使用条件随机字段模型从异构引用中提取元数据,例如作者姓名,标题,出版年份,卷,期刊,页码和期刊名称。为了进行实验验证该模型的有效性,使用了来自韩国93篇不同学术论文中的1,415篇参考文献,并获得了97.10%的高精度。

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