数字经济企业财务困境预测:基于PCA-Logistic

D. Li, Kai Xu, Yun Li, Yu Jiang, Ming Tang, Yangdan Lu, Chun Cheng, Chunxiao Wang, Guan-bing Mo
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引用次数: 3

摘要

财务困境预测是数字经济企业风险防控和持续经营保障的重要内容。本文以2017年和2021年的100家中国a股数字经济上市公司为样本,结合数字经济公司的特点得到财务指标,采用Logistic回归对前三期财务困境进行系统建模,同时采用主成分分析方法处理多重共线性问题。结果表明,盈利能力因子对预测作用的贡献最大;越接近金融危机发生的年份,预测准确率越高。最后,该模型达到了86%的预测精度。成功的模型为信息使用者准确和前瞻性地确定数字经济中企业的财务困境提供了基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Financial Distress Prediction for Digital Economy Firms: Based on PCA-Logistic
Financial distress prediction is important for risk prevention and control of digital economy firms, as well as going concern guarantee. This paper takes 100 Chinese A-share listed digital economy firms from 2017 and 2021 as samples, obtains financial indicators by combining the characteristics of digital economy firms, the first three periods of financial distress are systematically modeled employs Logistic regression, while we use the Principal Component Analysis method to deal with the problem of multicollinearity. The results show that the profitability factor has the greatest contribution to the predictive role; the closer to the year in which the financial distress occurred, the higher the prediction accuracy rate. Finally this model achieves 86% prediction accuracy. The successful modelling provides a basis for information users to determine the financial distress of firms accurately and prospectively in the digital economy.
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来源期刊
CiteScore
0.70
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0.00%
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24
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12 weeks
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