Enterprise Financial Risk Early Warning Using BP Neural Network Under Internet of Things and Rough Set Theory

Huan Zhang, Yonghui Luo
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引用次数: 5

Abstract

In this paper, an enterprise financial risk indicator system is established to warn about the financial risk of enterprises. First, the related knowledge of financial risk and its measurement is introduced. Next, the financial risk indicator system of small- and medium-sized enterprises (SMEs) is established based on back propagation neural network (BPNN). The rough set theory is adopted to simplify the indicator. Finally, the BPNN model is used to predict the financial situation of SMEs. The results show that in the 490th iteration, the performance of the BPNN-based financial risk early warning system for SMEs can reach the optimal and meet the accuracy requirements of initialization. The error of the enterprise financial risk early warning model converges to the target error, so the calculation result is credible. The actual output after training is close to the expected output. By judging the actual output value, it can be known that the financial risk status of SMEs in 2016, 2017 and 2018 is of low alarm. This exploration has a certain preventive effect on the financial risk of enterprises and provides a basis for the rapid development of enterprises.
基于物联网和粗糙集理论的BP神经网络企业财务风险预警
本文建立了企业财务风险指标体系,对企业财务风险进行预警。首先,介绍了财务风险及其度量的相关知识。其次,基于反向传播神经网络(BPNN)建立了中小企业财务风险指标体系。采用粗糙集理论对指标进行简化。最后,利用BPNN模型对中小企业的财务状况进行预测。结果表明,在第490次迭代时,基于bpnn的中小企业财务风险预警系统性能达到最优,满足初始化精度要求。企业财务风险预警模型误差收敛于目标误差,计算结果可信。训练后的实际输出接近预期输出。通过判断实际产值可知,2016年、2017年、2018年中小企业财务风险状况处于低预警状态。这一探索对企业的财务风险有一定的防范作用,为企业的快速发展提供了依据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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