Deep learning-based text knowledge classification for whole-process engineering consulting standards

IF 0.9 4区 工程技术 Q3 ENGINEERING, MULTIDISCIPLINARY
Gu Jianan , Ren Kehao , Gao Binwei
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引用次数: 0

Abstract

The knowledge classification technology has significant implications for the intelligent research of industries. In the field of whole-process engineering consulting, manually reading and processing large amounts of text data is both time-consuming and laborious. Knowledge classification technology can automatically classify these text data and extract key information, which can improve industry work efficiency. In this study, a deep learning-based text knowledge classification method is proposed to address the large-scale text classification problem in the whole-process engineering consulting field. Firstly, pre-trained language models such as RoBERTa, BERT, and Longformer-RoBERTa are used to extract features from text. Secondly, a multi-label classification model is used to classify the text. Experimental results show that the proposed method performs better than other commonly used models in both overall classification performance and individual category classification performance. Moreover, when the text knowledge classification model is integrated as a text representation module with common classification models such as CNN and LSTM, its performance is inferior to that of a pure classification model. The proposed text knowledge classification method is of great significance for the application in the field of whole-process engineering consulting and provides an effective solution for intelligent research in engineering consulting.

基于深度学习的全过程工程咨询标准文本知识分类
知识分类技术对工业领域的智能研究具有重要意义。在全过程工程咨询领域,人工阅读和处理大量文本数据既费时又费力。知识分类技术可以自动对这些文本数据进行分类并提取关键信息,从而提高行业工作效率。本研究针对全过程工程咨询领域的大规模文本分类问题,提出了一种基于深度学习的文本知识分类方法。首先,使用 RoBERTa、BERT 和 Longformer-RoBERTa 等预训练语言模型从文本中提取特征。其次,使用多标签分类模型对文本进行分类。实验结果表明,所提出的方法在整体分类性能和单个类别分类性能上都优于其他常用模型。此外,当文本知识分类模型作为文本表示模块与 CNN 和 LSTM 等常用分类模型集成时,其性能不如纯分类模型。本文提出的文本知识分类方法对于全过程工程咨询领域的应用具有重要意义,为工程咨询领域的智能化研究提供了有效的解决方案。
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来源期刊
Journal of Engineering Research
Journal of Engineering Research ENGINEERING, MULTIDISCIPLINARY-
CiteScore
1.60
自引率
10.00%
发文量
181
审稿时长
20 weeks
期刊介绍: Journal of Engineering Research (JER) is a international, peer reviewed journal which publishes full length original research papers, reviews, case studies related to all areas of Engineering such as: Civil, Mechanical, Industrial, Electrical, Computer, Chemical, Petroleum, Aerospace, Architectural, Biomedical, Coastal, Environmental, Marine & Ocean, Metallurgical & Materials, software, Surveying, Systems and Manufacturing Engineering. In particular, JER focuses on innovative approaches and methods that contribute to solving the environmental and manufacturing problems, which exist primarily in the Arabian Gulf region and the Middle East countries. Kuwait University used to publish the Journal "Kuwait Journal of Science and Engineering" (ISSN: 1024-8684), which included Science and Engineering articles since 1974. In 2011 the decision was taken to split KJSE into two independent Journals - "Journal of Engineering Research "(JER) and "Kuwait Journal of Science" (KJS).
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