Financial Risk Management Early-Warning Model for Chinese Enterprises

Author:

Wei Haitong12ORCID,Wang Xinghai23

Affiliation:

1. HongHao Data Intelligence Technology Co., Ltd., Beijing 102699, China

2. Data Intelligence Branch, Enterprise Financial Management Association of China, Beijing 100195, China

3. Big Data Application Research and Service Center, Modern Education Institute of China Academy of Management Sciences, Beijing 100036, China

Abstract

As enterprises face increasing competitive pressures, financial crises can significantly impact on their capital operations, potentially leading to operational difficulties and, ultimately, market exclusion. Consequently, many enterprises have begun to utilize financial early-warning systems to guide and control risks. Currently, there is neither a universal nor comprehensive enterprise financial risk management model in China, nor a unified classification standard for enterprise financial risk management levels. This article takes financial data on A-share listed companies in 2020 as the data sample, including those with special treatment (represented by ST) or non-ST status. We establish an independent indicator system within the framework of profitability, solvency, operational capability, development potential, shareholders’ retained earnings, cash flow, and asset growth. The model is constructed employing the factor–logistic fusion algorithm. The factor part addresses the issue of collinearity among risk indicators, and the logistic part presents the results in probabilistic form, enhancing the interpretability of the model. The prediction accuracy of this model exceeds 89%. Finally, by applying the principles of interval estimation theory to statistical hypothesis testing, we categorize the risk levels into Grade A, representing significant risk; Grade B, representing moderate risk; Grade C, representing minor risk; and Grade D, representing no risk. This article aims to provide a comprehensive definition of a universal financial risk management early-warning model applicable to all enterprises in China.

Publisher

MDPI AG

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