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

计算机科学 鉴定(生物学) 判决 集合(抽象数据类型) 情报检索 独创性 结构化 非结构化数据 自编码 人工智能 自然语言处理 数据科学 深度学习 数据挖掘 大数据 经济 程序设计语言 法学 财务 生物 植物 政治学 创造力
作者
Si Shen,Chuan Jiang,Haotian Hu,Youshu Ji,Dongbo Wang
出处
期刊:The Electronic Library [Emerald Publishing Limited]
卷期号:40 (6): 680-697 被引量:5
标识
DOI:10.1108/el-10-2021-0190
摘要

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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