This paper studies the consequences of capturing non-linear dependence among the covariates that drive the default of different obligors and the overall riskiness of their credit portfolio. Joint default modeling is, without loss of generality, the classical Bernoulli mixture model. Using an application to a credit card dataset we show that, even when Machine Learning techniques perform only slightly better than Logistic Regression in classifying individual defaults as a function of the covariates, they do outperform it at the portfolio level. This happens because they capture linear and non-linear dependence among the covariates, whereas Logistic Regression only captures linear dependence. The ability of Machine Learning methods to capture...
Increasing interest in credit risk modeling necessitates empirical validation of the numerous theore...
The ability of financial institutions to detect whether a customer will default on their credit card...
The use of statistical models in credit rating and application scorecard modelling is a thoroughly e...
The internal-ratings based Basel II approach increases the need for the development of more realisti...
In this master thesis we apply a variation of different machine learning techniques on a dataset for...
In this thesis, we analyse and evaluate classification models for panel credit risk data. Variables ...
A Dissertation submitted in partial fulfilment of the requirements for the Master of Science in Math...
Banks are financial institutions that lend money from other parties and provide loans to individuals...
This thesis has explored the field of internally developed models for measuring the probability of d...
Credit-lending companies have resorted to the use of Machine Learning algorithms in the recent past ...
Defaulting on a loan essentially occurs when an individual has stopped making payments on a loan or ...
In this thesis, alternative machine learning techniques have been used to test if these perform bett...
This master thesis explore the potential of Machine Learning techniques in predicting default of ve...
Basel 2 regulations brought new interest in supervised classification methodologies for predicting d...
Estimating default risk has been a major challenge in credit-risk analysis. Financial institutions a...
Increasing interest in credit risk modeling necessitates empirical validation of the numerous theore...
The ability of financial institutions to detect whether a customer will default on their credit card...
The use of statistical models in credit rating and application scorecard modelling is a thoroughly e...
The internal-ratings based Basel II approach increases the need for the development of more realisti...
In this master thesis we apply a variation of different machine learning techniques on a dataset for...
In this thesis, we analyse and evaluate classification models for panel credit risk data. Variables ...
A Dissertation submitted in partial fulfilment of the requirements for the Master of Science in Math...
Banks are financial institutions that lend money from other parties and provide loans to individuals...
This thesis has explored the field of internally developed models for measuring the probability of d...
Credit-lending companies have resorted to the use of Machine Learning algorithms in the recent past ...
Defaulting on a loan essentially occurs when an individual has stopped making payments on a loan or ...
In this thesis, alternative machine learning techniques have been used to test if these perform bett...
This master thesis explore the potential of Machine Learning techniques in predicting default of ve...
Basel 2 regulations brought new interest in supervised classification methodologies for predicting d...
Estimating default risk has been a major challenge in credit-risk analysis. Financial institutions a...
Increasing interest in credit risk modeling necessitates empirical validation of the numerous theore...
The ability of financial institutions to detect whether a customer will default on their credit card...
The use of statistical models in credit rating and application scorecard modelling is a thoroughly e...