Using access to a unique bank loss database, we find positive dependencies of default resolution times (DRTs) of defaulted bank loan contracts and final loan loss rates (losses given default, LGDs). Due to this interconnection, LGD predictions made at the time of default and during resolution are subject to censoring. Pure (standard) LGD models are not able to capture effects of censoring. Accordingly, their LGD predictions may be biased and underestimate loss rates of defaulted loans. In this paper, we develop a Bayesian hierarchical modelling framework for DRTs and LGDs. In comparison to previous approaches, we derive final DRT estimates for loans in default which enables consistent LGD predictions conditional on the time in default. Furt...
Recent credit risk literature has proposed (i) sample selection models for dependencies between the ...
The main objective of this paper is to estimate a statistical model that incorporates information at...
This cumulative thesis contributes to the literature on credit risk modeling and focuses on comoveme...
Using access to a unique bank loss database, we find positive dependencies of default resolution tim...
This cumulative doctoral thesis contributes to the broad literature on credit risk management and re...
Loss Given Default (LGD) is one of the key parameters needed in order to estimate expected and unexp...
The Basel regulatory credit risk rules for expected losses require banks use downturn loss given def...
In this study we investigated several most popular Loss Given Default (LGD) models (LSM, Tobit, Thre...
The topic of credit risk modeling has arguably become more important than ever before given the rece...
Arguably, the credit risk models reported in the literature for the retail lending sector have so fa...
We propose a new approach for comparing Loss Given Default (LGD) models which is based on loss funct...
We propose a new approach for comparing Loss Given Default (LGD) models which is based on loss funct...
The Basel II accord regulates risk and capital management requirements to ensure that a bank holds e...
© 2018 Elsevier B.V. Recent credit risk literature has proposed (i) sample selection models for depe...
The Basel Committee offers banks the opportunity to estimate Loss Given Default (LGD) if they wish t...
Recent credit risk literature has proposed (i) sample selection models for dependencies between the ...
The main objective of this paper is to estimate a statistical model that incorporates information at...
This cumulative thesis contributes to the literature on credit risk modeling and focuses on comoveme...
Using access to a unique bank loss database, we find positive dependencies of default resolution tim...
This cumulative doctoral thesis contributes to the broad literature on credit risk management and re...
Loss Given Default (LGD) is one of the key parameters needed in order to estimate expected and unexp...
The Basel regulatory credit risk rules for expected losses require banks use downturn loss given def...
In this study we investigated several most popular Loss Given Default (LGD) models (LSM, Tobit, Thre...
The topic of credit risk modeling has arguably become more important than ever before given the rece...
Arguably, the credit risk models reported in the literature for the retail lending sector have so fa...
We propose a new approach for comparing Loss Given Default (LGD) models which is based on loss funct...
We propose a new approach for comparing Loss Given Default (LGD) models which is based on loss funct...
The Basel II accord regulates risk and capital management requirements to ensure that a bank holds e...
© 2018 Elsevier B.V. Recent credit risk literature has proposed (i) sample selection models for depe...
The Basel Committee offers banks the opportunity to estimate Loss Given Default (LGD) if they wish t...
Recent credit risk literature has proposed (i) sample selection models for dependencies between the ...
The main objective of this paper is to estimate a statistical model that incorporates information at...
This cumulative thesis contributes to the literature on credit risk modeling and focuses on comoveme...