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Comparative research on structure function recognition based on deep learning

Zhongbao Liu (Institute of Language Intelligence, Beijing Language and Culture University, Beijing, China)
Wenjuan Zhao (Library, Beijing Language and Culture University, Beijing, China)

Library Hi Tech

ISSN: 0737-8831

Article publication date: 2 August 2022

96

Abstract

Purpose

The research on structure function recognition mainly concentrates on identifying a specific part of academic literature and its applicability in the multidiscipline perspective. A specific part of academic literature, such as sentences, paragraphs and chapter contents are also called a level of academic literature in this paper. There are a few comparative research works on the relationship between models, disciplines and levels in the process of structure function recognition. In view of this, comparative research on structure function recognition based on deep learning has been conducted in this paper.

Design/methodology/approach

An experimental corpus, including the academic literature of traditional Chinese medicine, library and information science, computer science, environmental science and phytology, was constructed. Meanwhile, deep learning models such as convolutional neural networks (CNN), long and short-term memory (LSTM) and bidirectional encoder representation from transformers (BERT) were used. The comparative experiments of structure function recognition were conducted with the help of the deep learning models from the multilevel perspective.

Findings

The experimental results showed that (1) the BERT model performed best, with F1 values of 78.02, 89.41 and 94.88%, respectively at the level of sentence, paragraph and chapter content. (2) The deep learning models performed better on the academic literature of traditional Chinese medicine than on other disciplines in most cases, e.g. F1 values of CNN, LSTM and BERT, respectively arrived at 71.14, 69.96 and 78.02% at the level of sentence. (3) The deep learning models performed better at the level of chapter content than other levels, the maximum F1 values of CNN, LSTM and BERT at 91.92, 74.90 and 94.88%, respectively. Furthermore, the confusion matrix of recognition results on the academic literature was introduced to find out the reason for misrecognition.

Originality/value

This paper may inspire other research on structure function recognition, and provide a valuable reference for the analysis of influencing factors.

Keywords

Acknowledgements

The authors want to thank the students who participated in the data collection and data pre-processing. The authors wish to thank the review team at Library Hi Tech for the constructive comments and insightful suggestions that helped improve significantly the quality of this manuscript.

Funding: This research was funded by Ministry of Education in China (MOE) Project of Humanities and Social Sciences (No. 21JHQ081).

Citation

Liu, Z. and Zhao, W. (2022), "Comparative research on structure function recognition based on deep learning", Library Hi Tech, Vol. ahead-of-print No. ahead-of-print. https://doi.org/10.1108/LHT-01-2022-0025

Publisher

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Emerald Publishing Limited

Copyright © 2022, Emerald Publishing Limited

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