Semi-supervised Multi-label Classification Method for Financial Events

With the continuous development of the digital financial service industry, the Internet and financial service systems have accumulated a large amount of text data. The automatic classification of financial events described in the financial text is a realistic demand of financial technology, and also...

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Bibliographic Details
Published inShuju Caiji yu Chuli = Journal of Data Acquisition and Processing Vol. 39; no. 2; p. 385
Main Authors Yang, Zhuofeng, Li, Yang, Li, Deyu
Format Journal Article
LanguageChinese
Published Nanjing Nanjing University of Aeronautics and Astronautics 01.01.2024
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ISSN1004-9037
DOI10.16337/j.1004-9037.2024.02.011

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Summary:With the continuous development of the digital financial service industry, the Internet and financial service systems have accumulated a large amount of text data. The automatic classification of financial events described in the financial text is a realistic demand of financial technology, and also a widespread concern in the field of natural language processing and machine learning. At present, the deep learning method has been widely used in text classification. Addressing the issues of lack of labeled data in multi label classification of financial events in text data, frequent resource consumption of existing deep learning methods, and failure to explore the specific characteristics of financial event texts, a semi-supervised multi-label classification method of financial events is proposed by using ALBERT, TextCNN and other presentation tools, introducing the subject word attention mechanism. Firstly, the problem of insufficient labeled data is alleviated through unsupervised data augmentation(UDA) meth
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ISSN:1004-9037
DOI:10.16337/j.1004-9037.2024.02.011