Research on Enterprise Credit Risk Prediction Based on Text Information

Haonan Zhang, Hongmei Zhang, Mu Zhang
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Abstract

This paper uses the text data mining method to separate the intonation in the annual reports of credit risk enterprises and non-credit risk enterprises, quantify it, and study the impact of annual report intonation on the effectiveness of credit risk prediction. In the empirical research, this paper uses the factor analysis method for some traditional financial variables, and uses the extracted components and intonation variables to predict the credit risk through the logistic model. The results show that the tone of enterprises with credit risk is more negative, and the degree of pessimism is significantly positively correlated with the probability of credit risk. By comparing the ROC curves of the prediction results before and after the addition of intonation variables, adding intonation variables to the credit risk prediction based on financial variables can improve the effectiveness of the prediction.
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基于文本信息的企业信用风险预测研究
本文采用文本数据挖掘的方法,对信用风险企业和非信用风险企业年报中的语调进行分离,并进行量化,研究年报语调对信用风险预测有效性的影响。在实证研究中,本文对一些传统的金融变量采用因子分析方法,并利用提取出来的成分和语调变量,通过logistic模型对信用风险进行预测。结果表明,信用风险企业的基调更为消极,悲观程度与信用风险发生概率显著正相关。通过对比加入语调变量前后预测结果的ROC曲线可知,在基于金融变量的信用风险预测中加入语调变量可以提高预测的有效性。
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来源期刊
CiteScore
0.70
自引率
0.00%
发文量
24
审稿时长
12 weeks
期刊最新文献
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