Sovereign credit ratings have been a controversial issue since the outbreak of the 2008 financial crisis. Among the debates the inaccuracies stay at the centre. By employing classification and regression trees, multilayer perceptron, support vector machines (SVM), Bayes net, and naive Bayes; we compare the ability of various learning techniques with the conventional statistical method in predicting sovereign credit ratings. Experimental results suggest that all the techniques excluding SVM have over 90 % accurate prediction. According to within one and two notch accurate prediction measure, the prediction performance of SVM also increases above 90 %. These findings indicate a clear outperformance of AI methods over the conventional statisti...
Conventional methods to test for credit ratings of financial debt issuers based on current means of ...
Credit scores are critical for financial sector investors and government officials, so it is importa...
This dissertation makes an inquiry into the contested and variegated perspectives of the determinant...
Sovereign credit ratings are becoming increasingly important both within a financial regulatory cont...
Abstract: This is an analysis of South Africa’s (SA) sovereign credit rating (SCR) using Naïve Bayes...
A sovereign credit rating is a function of hard and soft information that should reflect the creditw...
In this study, we examine the predictive performance of a wide class of binary classifiers using a l...
The use of statistical models in credit rating and application scorecard modelling is a thoroughly e...
Nowadays, the sovereign credit rating is not only an index of a country’s economic performance and p...
This project will explore machine learning approaches that are used in creditscoring. In this study ...
In order to identify novel qualitative determinants of transitions in sovereign credit ratings, we c...
Machine learning is becoming a part of everyday life and has an indisputable impact across large arr...
Machine learning and artificial intelligence have achieved a human-level performance in many applica...
© Springer International Publishing Switzerland 2015. In recent years, machine learning techniques h...
This paper mainly analyses the forecasting of sub-sovereign credit ratings using machine learning me...
Conventional methods to test for credit ratings of financial debt issuers based on current means of ...
Credit scores are critical for financial sector investors and government officials, so it is importa...
This dissertation makes an inquiry into the contested and variegated perspectives of the determinant...
Sovereign credit ratings are becoming increasingly important both within a financial regulatory cont...
Abstract: This is an analysis of South Africa’s (SA) sovereign credit rating (SCR) using Naïve Bayes...
A sovereign credit rating is a function of hard and soft information that should reflect the creditw...
In this study, we examine the predictive performance of a wide class of binary classifiers using a l...
The use of statistical models in credit rating and application scorecard modelling is a thoroughly e...
Nowadays, the sovereign credit rating is not only an index of a country’s economic performance and p...
This project will explore machine learning approaches that are used in creditscoring. In this study ...
In order to identify novel qualitative determinants of transitions in sovereign credit ratings, we c...
Machine learning is becoming a part of everyday life and has an indisputable impact across large arr...
Machine learning and artificial intelligence have achieved a human-level performance in many applica...
© Springer International Publishing Switzerland 2015. In recent years, machine learning techniques h...
This paper mainly analyses the forecasting of sub-sovereign credit ratings using machine learning me...
Conventional methods to test for credit ratings of financial debt issuers based on current means of ...
Credit scores are critical for financial sector investors and government officials, so it is importa...
This dissertation makes an inquiry into the contested and variegated perspectives of the determinant...