The aim of this paper is to evaluate the results in term of misclassification rate of two classification models, Logit and Classification Trees (Cart), in a credit scoring context. Due to the dependence of results on input variables we will take into account this aspect to evaluate the prediction performance. To improve the prediction capability of this two models, we have also applied two statistical techniques, bagging and boosting, to evaluate whether using these aggregated predictors can be reached a better performance in term of classification results. Our results indicate a better classification capability of Cart and the error rate of both models can be further reduced using aggregated predictors. Furthermore Cart avoids variables se...
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...
In the context of credit scoring, ensemble methods based on decision trees, such as the random fores...
The aim of this paper is to evaluate the results in term of misclassification rate of two classifica...
The aim of this paper is to evaluate the results in term of misclassification rate of two classifica...
Credit scoring modelling comprises one of the leading formal tools for supporting the granting of cr...
Credit scoring modelling comprises one of the leading formal tools for supporting the granting of cr...
In our thesis we carry out an empirical data set analysis and a thorough case study of statistical c...
In our thesis we carry out an empirical data set analysis and a thorough case study of statistical c...
Credit scoring modelling comprises one of the leading formal tools for supporting the granting of cr...
AbstractIn this paper, we set out to compare several techniques that can be used in the analysis of ...
In this paper, we set out to compare several techniques that can be used in the analysis of imbalanc...
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...
This project will explore machine learning approaches that are used in creditscoring. In this study ...
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...
In the context of credit scoring, ensemble methods based on decision trees, such as the random fores...
The aim of this paper is to evaluate the results in term of misclassification rate of two classifica...
The aim of this paper is to evaluate the results in term of misclassification rate of two classifica...
Credit scoring modelling comprises one of the leading formal tools for supporting the granting of cr...
Credit scoring modelling comprises one of the leading formal tools for supporting the granting of cr...
In our thesis we carry out an empirical data set analysis and a thorough case study of statistical c...
In our thesis we carry out an empirical data set analysis and a thorough case study of statistical c...
Credit scoring modelling comprises one of the leading formal tools for supporting the granting of cr...
AbstractIn this paper, we set out to compare several techniques that can be used in the analysis of ...
In this paper, we set out to compare several techniques that can be used in the analysis of imbalanc...
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...
This project will explore machine learning approaches that are used in creditscoring. In this study ...
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...
In the context of credit scoring, ensemble methods based on decision trees, such as the random fores...