We propose an alternative approach to the modeling of the positive dependence between the probability of default and the loss given default in a portfolio of exposures, using a bivariate urn process. The model combines the power of Bayesian nonparametrics and statistical learning, allowing for the elicitation and the exploitation of experts’ judgements, and for the constant update of this information over time, every time new data are available. A real-world application on mortgages is described using the Single Family Loan-Level Dataset by Freddie Mac
The goal of this thesis is to model and predict the probability of default (PD) for a mortgage portf...
The Basel regulatory credit risk rules for expected losses require banks use downturn loss given def...
Using access to a unique bank loss database, we find positive dependencies of default resolution tim...
We propose an alternative approach to the modeling of the positive dependence between the probabilit...
We propose a Bayesian nonparametric model to estimate rating migration matrices and default probabil...
AbstractThe Internal Ratings Based (IRB) approach introduced in the Basel II Accord requires financi...
The paper describes a theoretical approach to determine the downturn LGD for residential mortgages, ...
In this article, a generic severity risk framework in which loss given default (LGD) is dependent up...
In this paper we propose a new nonparametric approach to interacting failing systems (FS), that is s...
Estimating default risk has been a major challenge in credit-risk analysis. Financial institutions a...
The introduction of the Basel II Accord has had a huge impact on financial institutions, allowing th...
Arguably, the credit risk models reported in the literature for the retail lending sector have so fa...
This paper studies the consequences of capturing non-linear dependence among the covariates that dri...
This dissertation collects three scientific contributions, already published in international peer-r...
The topic of credit risk modeling has arguably become more important than ever before given the rece...
The goal of this thesis is to model and predict the probability of default (PD) for a mortgage portf...
The Basel regulatory credit risk rules for expected losses require banks use downturn loss given def...
Using access to a unique bank loss database, we find positive dependencies of default resolution tim...
We propose an alternative approach to the modeling of the positive dependence between the probabilit...
We propose a Bayesian nonparametric model to estimate rating migration matrices and default probabil...
AbstractThe Internal Ratings Based (IRB) approach introduced in the Basel II Accord requires financi...
The paper describes a theoretical approach to determine the downturn LGD for residential mortgages, ...
In this article, a generic severity risk framework in which loss given default (LGD) is dependent up...
In this paper we propose a new nonparametric approach to interacting failing systems (FS), that is s...
Estimating default risk has been a major challenge in credit-risk analysis. Financial institutions a...
The introduction of the Basel II Accord has had a huge impact on financial institutions, allowing th...
Arguably, the credit risk models reported in the literature for the retail lending sector have so fa...
This paper studies the consequences of capturing non-linear dependence among the covariates that dri...
This dissertation collects three scientific contributions, already published in international peer-r...
The topic of credit risk modeling has arguably become more important than ever before given the rece...
The goal of this thesis is to model and predict the probability of default (PD) for a mortgage portf...
The Basel regulatory credit risk rules for expected losses require banks use downturn loss given def...
Using access to a unique bank loss database, we find positive dependencies of default resolution tim...