The enormous growth experienced by the credit industry has led researchers to develop sophisticated credit scoring models that help lenders decide whether to grant or reject credit to applicants. This paper proposes a credit scoring model based on boosted decision trees, a powerful learning technique that aggregates several decision trees to form a classifier given by a weighted majority vote of classifications predicted by individual decision trees. The performance of boosted decision trees is evaluated using two publicly available credit card application datasets. The prediction accuracy of boosted decision trees is benchmarked against two alternative data mining techniques: the multilayer perceptron and support vector machines. The resul...
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...
This project will explore machine learning approaches that are used in creditscoring. In this study ...
The enormous growth experienced by the credit industry has led researchers to develop sophisticated ...
For many years lenders have been using traditional statistical techniques such as logistic regressio...
Credit scoring is the term used by the credit industry to describe methods used for classifying appl...
Banks take great care when dealing with customer loans to avoid any improper decisions that can lead...
For many years lenders have been using traditional statistical techniques such as logistic regressio...
AbstractThe big data revolution and recent advancements in computing power have increased the intere...
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 big data revolution and recent advancements in computing power have increased the interest in cr...
Dissertation report presented as partial requirement for obtaining the Master’s degree in Informatio...
The use of statistical models in credit rating and application scorecard modelling is a thoroughly e...
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...
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 ...
The enormous growth experienced by the credit industry has led researchers to develop sophisticated ...
For many years lenders have been using traditional statistical techniques such as logistic regressio...
Credit scoring is the term used by the credit industry to describe methods used for classifying appl...
Banks take great care when dealing with customer loans to avoid any improper decisions that can lead...
For many years lenders have been using traditional statistical techniques such as logistic regressio...
AbstractThe big data revolution and recent advancements in computing power have increased the intere...
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 big data revolution and recent advancements in computing power have increased the interest in cr...
Dissertation report presented as partial requirement for obtaining the Master’s degree in Informatio...
The use of statistical models in credit rating and application scorecard modelling is a thoroughly e...
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...
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 ...