peer reviewedWe investigate a novel database of 10,217 extreme operational losses from the Italian bank UniCredit, covering a period of 10 years and 7 different event types. Our goal is to shed light on the dependence between the severity distribution of these losses and a set of macroeconomic, financial and firm-specific factors. To do so, we use Generalized Pareto regression techniques, where both the scale and shape parameters are assumed to be functions of these explanatory variables. In this complex distributional regression framework, we perform the selection of the relevant covariates with a state-of-the-art penalized-likelihood estimation procedure relying on $L_{1}$-norm penalty terms of the coefficients. A simulation study indicat...
The Basel II capital accord has fostered the debate over the financial stability of the aggregate ba...
International audienceOperational risk quantification requires dealing with data sets which often pr...
We determine whether there is an endogenous Hidden Markov Regime (HMR) in the operational loss data ...
peer reviewedWe investigate a novel database of 10,217 extreme operational losses from the Italian ...
peer reviewedWe introduce a smooth-transition generalized Pareto (GP) regression model to study the ...
In this paper, we model the severity distribution of operational losses data, condi- tional on some...
In this paper, we analyse a database of around 41,000 operational losses from the European bank UniC...
We study the link between the distribution of extreme operational losses and the economic context, ...
Operational losses are true dangers for banks since their maximal values to signal default are diffi...
The paper proposes a novel model for the prediction of bank failures, on the basis of both macroecon...
Using equity returns for financial institutions we estimate both catastrophic and operational risk m...
The article concerns the issue of modelling of operational risk in a bank. The area of analysis is r...
In this study we try to explain the inclusion of banks in the WDCI list proposed by Bloomberg. This ...
The objective of this article is to develop a precise and rigorous measurement of a bank's operation...
According to Basel II criteria, the use of external data is absolutely indispensable to the implemen...
The Basel II capital accord has fostered the debate over the financial stability of the aggregate ba...
International audienceOperational risk quantification requires dealing with data sets which often pr...
We determine whether there is an endogenous Hidden Markov Regime (HMR) in the operational loss data ...
peer reviewedWe investigate a novel database of 10,217 extreme operational losses from the Italian ...
peer reviewedWe introduce a smooth-transition generalized Pareto (GP) regression model to study the ...
In this paper, we model the severity distribution of operational losses data, condi- tional on some...
In this paper, we analyse a database of around 41,000 operational losses from the European bank UniC...
We study the link between the distribution of extreme operational losses and the economic context, ...
Operational losses are true dangers for banks since their maximal values to signal default are diffi...
The paper proposes a novel model for the prediction of bank failures, on the basis of both macroecon...
Using equity returns for financial institutions we estimate both catastrophic and operational risk m...
The article concerns the issue of modelling of operational risk in a bank. The area of analysis is r...
In this study we try to explain the inclusion of banks in the WDCI list proposed by Bloomberg. This ...
The objective of this article is to develop a precise and rigorous measurement of a bank's operation...
According to Basel II criteria, the use of external data is absolutely indispensable to the implemen...
The Basel II capital accord has fostered the debate over the financial stability of the aggregate ba...
International audienceOperational risk quantification requires dealing with data sets which often pr...
We determine whether there is an endogenous Hidden Markov Regime (HMR) in the operational loss data ...