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 a...
Nowadays, the three major credit risks at banks and financial institutions are effective in various ...
Corporate credit ratings are a formal and independent opinion about a company's creditworthiness and...
The paper aims to propose a new method to state the credit risk characteristics of the regional list...
Traditional credit risk prediction models mainly rely on financial data. However, technological inno...
We apply text mining (TM) techniques to extract and quantify relevant Chinese financial news, in an ...
[[abstract]]We apply computational linguistic text mining (TM) analysis to extract and quantify rele...
Enterprise credit risk assessment models typically use financial-based information as a predictor va...
The financial distress of listed companies not only threatens the interests of the enterprise and in...
Traditional economic and business forecasting about corporate credit has relied on statistics from g...
Irrecoverable receivables resulting from insolvent debtors endanger the own liquidity. Therefore, co...
This thesis aims to investigate different machine learning (ML) models and their performance to find...
Models that predict corporate financial risk are important early-warning systems for corporate stake...
Credit risk is one of the three components making up financial risk. Under the New Basel Capital Acc...
This paper examines the prediction accuracy of various machine learning (ML) algorithms for firm cre...
This study uses text and data mining to investigate the relationship between the text patterns of an...
Nowadays, the three major credit risks at banks and financial institutions are effective in various ...
Corporate credit ratings are a formal and independent opinion about a company's creditworthiness and...
The paper aims to propose a new method to state the credit risk characteristics of the regional list...
Traditional credit risk prediction models mainly rely on financial data. However, technological inno...
We apply text mining (TM) techniques to extract and quantify relevant Chinese financial news, in an ...
[[abstract]]We apply computational linguistic text mining (TM) analysis to extract and quantify rele...
Enterprise credit risk assessment models typically use financial-based information as a predictor va...
The financial distress of listed companies not only threatens the interests of the enterprise and in...
Traditional economic and business forecasting about corporate credit has relied on statistics from g...
Irrecoverable receivables resulting from insolvent debtors endanger the own liquidity. Therefore, co...
This thesis aims to investigate different machine learning (ML) models and their performance to find...
Models that predict corporate financial risk are important early-warning systems for corporate stake...
Credit risk is one of the three components making up financial risk. Under the New Basel Capital Acc...
This paper examines the prediction accuracy of various machine learning (ML) algorithms for firm cre...
This study uses text and data mining to investigate the relationship between the text patterns of an...
Nowadays, the three major credit risks at banks and financial institutions are effective in various ...
Corporate credit ratings are a formal and independent opinion about a company's creditworthiness and...
The paper aims to propose a new method to state the credit risk characteristics of the regional list...