深度学习在金融风险预测中的研究进展

IF 3.2 Q1 BUSINESS, FINANCE
Kuashuai Peng, Guofeng Yan
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引用次数: 9

摘要

金融科技的快速发展,在给人们的生产生活提供了很多便利的同时,也给金融安全带来了很多风险。防范金融风险,较好的方法是在金融风险发生之前建立准确的预警模型,而不是在风险爆发后才去寻找解决方案。在过去的十年中,深度学习在图像识别、自然语言处理等领域取得了惊人的成就。因此,一些研究者尝试将深度学习方法应用到金融风险预测中,大多数结果都是令人满意的。本文的主要工作是根据金融数据的异质性、多源性和不平衡性三个突出特征,对前人关于金融风险预测的深度学习研究进行综述。本文首先简要介绍了一些经典的深度学习模型作为金融风险预测的模型基础。然后分析了财务数据具有这些特征的原因。同时,根据不同的数据特征,研究了常用深度学习模型的差异。最后,我们指出了该领域存在的一些具有研究意义的开放性问题,并提出了未来可能可行的实施方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A survey on deep learning for financial risk prediction
The rapid development of financial technology not only provides a lot of convenience to people's production and life, but also brings a lot of risks to financial security. To prevent financial risks, a better way is to build an accurate warning model before the financial risk occurs, not to find a solution after the outbreak of the risk. In the past decade, deep learning has made amazing achievements in the fields, such as image recognition, natural language processing. Therefore, some researchers try to apply deep learning methods to financial risk prediction and most of the results are satisfactory. The main work of this paper is to review the predecessors' work of deep learning for financial risk prediction according to three prominent characteristics of financial data: heterogeneity, multi-source, and imbalance. We first briefly introduced some classical deep learning models as the model basis of financial risk prediction. Then we analyzed the reasons for these characteristics of financial data. Meanwhile, we studied the differences of commonly used deep learning models according to different data characteristics. Finally, we pointed out some open issues with research significance in this field and suggested the future implementations that might be feasible.
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来源期刊
CiteScore
0.30
自引率
1.90%
发文量
14
审稿时长
12 weeks
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