用文献图表示书目和实体的生物医学文献分类

Ryuki Ida, Makoto Miwa, Yutaka Sasaki
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引用次数: 0

摘要

本文提出了一种新的文献分类方法,该方法结合了由书目信息和实体信息创建的文献图的表示。近年来,大型预训练语言模型显著提高了文档分类性能;然而,仍有一些文件难以分类。外部信息,如书目信息、引文链接、实体描述和医学分类法,被认为是文档分类中处理此类文档的关键之一。虽然已经提出了几种使用外部信息的文档分类方法,但它们只考虑了有限的关系,例如词共现关系和引文关系。然而,外部信息有多种类型。为了克服传统使用外部信息的局限性,我们提出了一种同时考虑书目信息和实体信息的文档分类模型,利用文献图的表示对文档之间的关系进行深度建模。实验结果表明,在文献图的帮助下,我们提出的方法在生物医学领域的两个文档分类数据集上优于现有方法。
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Biomedical Document Classification with Literature Graph Representations of Bibliographies and Entities
This paper proposes a new document classification method that incorporates the representations of a literature graph created from bibliographic and entity information.Recently, document classification performance has been significantly improved with large pre-trained language models; however, there still remain documents that are difficult to classify. External information, such as bibliographic information, citation links, descriptions of entities, and medical taxonomies, has been considered one of the keys to dealing with such documents in document classification. Although several document classification methods using external information have been proposed, they only consider limited relationships, e.g., word co-occurrence and citation relationships. However, there are multiple types of external information.To overcome the limitation of the conventional use of external information, we propose a document classification model that simultaneously considers bibliographic and entity information to deeply model the relationships among documents using the representations of the literature graph.The experimental results show that our proposed method outperforms existing methods on two document classification datasets in the biomedical domain with the help of the literature graph.
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