In this study, we examine the predictive performance of a wide class of binary classifiers using a large sample of international credit ratings changes from the period 1983-2013. Using a number of financial, market, corporate governance, macro-economic and other indicators as explanatory variables, we compare classifiers ranging from conventional techniques (such as logit/probit and LDA) to fully nonlinear classifiers, including neural networks, support vector machines and more recent statistical learning techniques such as generalised boosting, AdaBoost and random forests. We find that the newer classifiers significantly outperform all other classifiers on both the cross sectional and longitudinal test samples; and prove remarkably robust ...
This project will explore machine learning approaches that are used in creditscoring. In this study ...
In the context of credit scoring, ensemble methods based on decision trees, such as the random fores...
Machine learning and artificial intelligence have achieved a human-level performance in many applica...
In this paper, we study the performance of various state-of-the-art classification algorithms applie...
In this paper, we set out to compare several techniques that can be used in the analysis of imbalanc...
AbstractIn this paper, we set out to compare several techniques that can be used in the analysis of ...
The use of statistical models in credit rating and application scorecard modelling is a thoroughly e...
In this paper, we investigate the performance of several systems based on ensemble of classifiers fo...
The design of consistent classifiers to forecast credit-granting choices is critical for many financ...
In our master thesis, we compare ten classification algorithms for credit scor- ing. Their predictio...
In the context of credit scoring, ensemble methods based on decision trees, such as the random fores...
Basel 2 regulations brought new interest in supervised classification methodologies for predicting d...
Using machine learning methods, this chapter studies features that are important to predict corporat...
In the context of credit scoring, ensemble methods based on decision trees, such as the random fores...
Sovereign credit ratings have been a controversial issue since the outbreak of the 2008 financial cr...
This project will explore machine learning approaches that are used in creditscoring. In this study ...
In the context of credit scoring, ensemble methods based on decision trees, such as the random fores...
Machine learning and artificial intelligence have achieved a human-level performance in many applica...
In this paper, we study the performance of various state-of-the-art classification algorithms applie...
In this paper, we set out to compare several techniques that can be used in the analysis of imbalanc...
AbstractIn this paper, we set out to compare several techniques that can be used in the analysis of ...
The use of statistical models in credit rating and application scorecard modelling is a thoroughly e...
In this paper, we investigate the performance of several systems based on ensemble of classifiers fo...
The design of consistent classifiers to forecast credit-granting choices is critical for many financ...
In our master thesis, we compare ten classification algorithms for credit scor- ing. Their predictio...
In the context of credit scoring, ensemble methods based on decision trees, such as the random fores...
Basel 2 regulations brought new interest in supervised classification methodologies for predicting d...
Using machine learning methods, this chapter studies features that are important to predict corporat...
In the context of credit scoring, ensemble methods based on decision trees, such as the random fores...
Sovereign credit ratings have been a controversial issue since the outbreak of the 2008 financial cr...
This project will explore machine learning approaches that are used in creditscoring. In this study ...
In the context of credit scoring, ensemble methods based on decision trees, such as the random fores...
Machine learning and artificial intelligence have achieved a human-level performance in many applica...