A model for the identification of the functional structures of unstructured abstracts in the social sciences

Si Shen, Chuan Jiang, Haotian Hu, Youshu Ji, Dongbo Wang
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引用次数: 1

Abstract

Purpose Reorganising unstructured academic abstracts according to a certain logical structure can help scholars not only extract valid information quickly but also facilitate the faceted search of academic literature. This study aims to build a high-performance model for identifying of the functional structures of unstructured abstracts in the social sciences. Design/methodology/approach This study first investigated the structuring of abstracts in academic articles in the field of social sciences, using large-scale statistical analyses. Then, the functional structures of sentences in the abstract in a corpus of more than 3.5 million abstracts were identified from sentence classification and sequence tagging by using several models based on either machine learning or a deep learning approach, and the results were compared. Findings The results demonstrate that the functional structures of sentences in abstracts in social science manuscripts include the background, purpose, methods, results and conclusions. The experimental results show that the bidirectional encoder representation from transformers exhibited the best performance, the overall F1 score of which was 86.23%. Originality/value The data set of annotated social science abstract is generated and corresponding models are trained on the basis of the data set, both of which are available on Github (https://github.com/Academic-Abstract-Knowledge-Mining/SSCI_Abstract_Structures_Identification). Based on the optimised model, a Web application for the identification of the functional structures of abstracts and their faceted search in social sciences was constructed to enable rapid and convenient reading, organisation and fine-grained retrieval of academic abstracts.
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社会科学中非结构化摘要的功能结构识别模型
目的将非结构化的学术摘要按一定的逻辑结构组织起来,不仅可以帮助学者快速提取有效信息,而且有利于学术文献的分面检索。本研究旨在建立一个高效能的社会科学非结构化摘要功能结构识别模型。设计/方法/方法本研究首先使用大规模统计分析方法调查了社会科学领域学术文章摘要的结构。然后,利用基于机器学习或深度学习的几种模型,从句子分类和序列标注两方面对350多万篇摘要语料库中的摘要句子的功能结构进行识别,并对结果进行比较。结果表明:社科稿件摘要的句子功能结构包括背景、目的、方法、结果和结论。实验结果表明,变压器双向编码器表示效果最好,F1总得分为86.23%。原创性/价值生成带注释的社科摘要数据集,并在数据集的基础上训练相应的模型,两者都可以在Github上获得(https://github.com/Academic-Abstract-Knowledge-Mining/SSCI_Abstract_Structures_Identification)。基于优化后的模型,构建了一个社会科学摘要功能结构识别和分面搜索的Web应用程序,实现了对学术摘要的快速便捷的阅读、组织和细粒度检索。
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