Traditional economic and business forecasting about corporate credit has relied on statistics from government agencies, annual reports and financial statements. These statistics are often published with significant delay, which limits their usefulness for predicting changes in creditworthiness. Yet, a delay in responding to changes in a company’s credit rating can have significant financial and risk consequences. With the widespread adoption of search engines, social media and related information technologies, it is possible to obtain data on literally trillions of economic decisions almost the instant that they are made. In this study, we investigated the power of these online activity data combined with data on firms’ business ecosystem...
The article presents the basic techniques of data mining implemented in typical commercial software....
ABSTRACT This paper provides new insights into payment behavior prediction by using daily ledger dat...
This book focuses on the alternative techniques and data leveraged for credit risk, describing and a...
Traditional economic and business forecasting about corporate credit has relied on statistics from g...
Corporate credit ratings are a formal and independent opinion about a company's creditworthiness and...
This paper examines the prediction accuracy of various machine learning (ML) algorithms for firm cre...
Recent literature shows an increasing interest in considering alternative sources of information for...
Irrecoverable receivables resulting from insolvent debtors endanger the own liquidity. Therefore, co...
Abstract: This paper uses the text data mining method to separate the intonation in the annual repor...
This research investigates the possibility to classify the companies into default and non-default gr...
With the development of Internet techniques, data volumes are doubling every two years, faster than ...
The 2022 World Economic Forum surveyed 1,000 experts and leaders who indicated their risk perception...
Traditional credit risk prediction models mainly rely on financial data. However, technological inno...
We employ a sample of 10,136 Italian micro-, small-, and mid-sized enterprises (MSMEs) that borrow f...
In the current competitive and uncertain e-commerce environment, businesses have the need to predict...
The article presents the basic techniques of data mining implemented in typical commercial software....
ABSTRACT This paper provides new insights into payment behavior prediction by using daily ledger dat...
This book focuses on the alternative techniques and data leveraged for credit risk, describing and a...
Traditional economic and business forecasting about corporate credit has relied on statistics from g...
Corporate credit ratings are a formal and independent opinion about a company's creditworthiness and...
This paper examines the prediction accuracy of various machine learning (ML) algorithms for firm cre...
Recent literature shows an increasing interest in considering alternative sources of information for...
Irrecoverable receivables resulting from insolvent debtors endanger the own liquidity. Therefore, co...
Abstract: This paper uses the text data mining method to separate the intonation in the annual repor...
This research investigates the possibility to classify the companies into default and non-default gr...
With the development of Internet techniques, data volumes are doubling every two years, faster than ...
The 2022 World Economic Forum surveyed 1,000 experts and leaders who indicated their risk perception...
Traditional credit risk prediction models mainly rely on financial data. However, technological inno...
We employ a sample of 10,136 Italian micro-, small-, and mid-sized enterprises (MSMEs) that borrow f...
In the current competitive and uncertain e-commerce environment, businesses have the need to predict...
The article presents the basic techniques of data mining implemented in typical commercial software....
ABSTRACT This paper provides new insights into payment behavior prediction by using daily ledger dat...
This book focuses on the alternative techniques and data leveraged for credit risk, describing and a...