Financial Risk Prediction Model in the Context of Big Data - Corporate Financial Risk Control Based on LSTM Deep Neural Networks

Qiang Du
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Abstract

Abstract This paper is based on the use of recurrent neural networks and LSTM deep neural networks to obtain the financial risk prediction feature sequence in the context of big data. The financial risk prediction feature sequence is used as the input value of the input gate of the LSTM deep neural network model after data filtering, normalization and loss function optimization, and then the financial risk prediction for the output gate of the LSTM deep neural network model. Considering the availability of data, small and medium-sized enterprises listed in A-share companies in the Wind database are selected as sample enterprises, and evaluation indexes are constructed and detected at the same time so as to complete the experimental design of enterprise financial risk prediction in the context of big data. The prediction of enterprise financial risk is empirically analyzed using simulation analysis and statistical analysis. The results show that in the model performance analysis, the average value of ten years of data, the highest value is still the result obtained by LSTM training, 0.761, compared with other models of LSTM deep neural network in static financial risk prediction in the overall best performance. In the case study of Yibai Pharmaceutical, the minimum value of the rate of return, return on total assets, and return on assets were -10.02%, 2.56%, -20.72%, which reflects the fact that the private enterprises still have large profitability space to be mined. This study helps investors or financial institutions such as funds to find out the possible financial risk crisis of listed companies as early as possible to avoid the parties from incurring large financial losses.
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大数据背景下的金融风险预测模型--基于 LSTM 深度神经网络的企业金融风险控制
摘要本文基于循环神经网络和LSTM深度神经网络,获得大数据背景下的金融风险预测特征序列。将金融风险预测特征序列作为LSTM深度神经网络模型经过数据滤波、归一化和损失函数优化后的输入门的输入值,然后对LSTM深度神经网络模型的输出门进行金融风险预测。考虑到数据的可得性,选取Wind数据库中a股上市中小企业作为样本企业,同时构建和检测评价指标,完成大数据背景下企业财务风险预测的实验设计。运用模拟分析和统计分析对企业财务风险的预测进行了实证分析。结果表明,在模型性能分析中,十年数据的平均值中,最高的值仍然是LSTM训练得到的结果,为0.761,与其他模型相比,LSTM深度神经网络在静态金融风险预测中整体表现最好。在益百药业的案例研究中,收益率、总资产收益率、资产收益率的最小值分别为-10.02%、2.56%、-20.72%,反映出民营企业仍有较大的盈利空间有待挖掘。本研究有助于投资者或基金等金融机构尽早发现上市公司可能出现的财务风险危机,避免各方遭受较大的财务损失。
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来源期刊
Applied Mathematics and Nonlinear Sciences
Applied Mathematics and Nonlinear Sciences Engineering-Engineering (miscellaneous)
CiteScore
2.90
自引率
25.80%
发文量
203
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