The design of consistent classifiers to forecast credit-granting choices is critical for many financial decision-making practices. Although a number of artificial and statistical techniques have been developed to predict customer insolvency, how to provide an inclusive appraisal of prediction models and recommend adequate classifiers is still an imperative and understudied area in credit default prediction (CDP) modeling. Previous evidence demonstrates that the ranking of classifiers varies for different criteria with measures under different circumstances. In this study, we address this methodological flaw by proposing the simultaneous application of support vector machine and probabilistic neural network (PNN)-based CDP algorithms, togeth...
AbstractIn this paper, we set out to compare several techniques that can be used in the analysis of ...
In this study, we examine the predictive performance of a wide class of binary classifiers using a l...
In this paper, we set out to compare several techniques that can be used in the analysis of imbalanc...
The ability of financial institutions to detect whether a customer will default on their credit card...
This master thesis explore the potential of Machine Learning techniques in predicting default of veh...
The use of statistical models in credit rating and application scorecard modelling is a thoroughly e...
It has great significance for the healthy development of credit industry to control the credit defau...
One of the core functions of a financial institution is the credit risk management and one of the mo...
Basel 2 regulations brought new interest in supervised classification methodologies for predicting d...
Aiming at the personal credit evaluation of commercial banks, this paper constructs a classified pre...
The assessment of financial credit risk constitutes an important, yet challenging research topic acr...
In this thesis, we analyse and evaluate classification models for panel credit risk data. Variables ...
Despite recent improvements in machine-learning prediction methods, the methods used by most lenders...
Defaulting on a loan essentially occurs when an individual has stopped making payments on a loan or ...
Increasing interest in credit risk modeling necessitates empirical validation of the numerous theore...
AbstractIn this paper, we set out to compare several techniques that can be used in the analysis of ...
In this study, we examine the predictive performance of a wide class of binary classifiers using a l...
In this paper, we set out to compare several techniques that can be used in the analysis of imbalanc...
The ability of financial institutions to detect whether a customer will default on their credit card...
This master thesis explore the potential of Machine Learning techniques in predicting default of veh...
The use of statistical models in credit rating and application scorecard modelling is a thoroughly e...
It has great significance for the healthy development of credit industry to control the credit defau...
One of the core functions of a financial institution is the credit risk management and one of the mo...
Basel 2 regulations brought new interest in supervised classification methodologies for predicting d...
Aiming at the personal credit evaluation of commercial banks, this paper constructs a classified pre...
The assessment of financial credit risk constitutes an important, yet challenging research topic acr...
In this thesis, we analyse and evaluate classification models for panel credit risk data. Variables ...
Despite recent improvements in machine-learning prediction methods, the methods used by most lenders...
Defaulting on a loan essentially occurs when an individual has stopped making payments on a loan or ...
Increasing interest in credit risk modeling necessitates empirical validation of the numerous theore...
AbstractIn this paper, we set out to compare several techniques that can be used in the analysis of ...
In this study, we examine the predictive performance of a wide class of binary classifiers using a l...
In this paper, we set out to compare several techniques that can be used in the analysis of imbalanc...