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An Application of Bayesian Inference on the Modeling and Estimation of Operational Risk Using Banking Loss Data

Authors :
Kashfia N. Rahman
Dennis Black
Gary C. McDonald
Source :
Applied Mathematics. :862-876
Publication Year :
2014
Publisher :
Scientific Research Publishing, Inc., 2014.

Abstract

Bayesian inference method has been presented in this paper for the modeling of operational risk. Bank internal and external data are divided into defined loss cells and then fitted into probability distributions. The distribution parameters and their uncertainties are estimated from posterior distributions derived using the Bayesian inference. Loss frequency is fitted into Poisson distributions. While the Poisson parameters, in a similar way, are defined by a posterior distribution developed using Bayesian inference. Bank operation loss typically has some low frequency but high magnitude loss data. These heavy tail low frequency loss data are divided into several buckets where the bucket frequencies are defined by the experts. A probability distribution, as defined by the internal and external data, is used for these data. A Poisson distribution is used for the bucket frequencies. However instead of using any distribution of the Poisson parameters, point estimations are used. Monte Carlo simulation is then carried out to calculate the capital charge of the in- ternal as well as the heavy tail high profile low frequency losses. The output of the Monte Carlo simulation defines the capital requirement that has to be allocated to cover potential operational risk losses for the next year.

Details

ISSN :
21527393 and 21527385
Database :
OpenAIRE
Journal :
Applied Mathematics
Accession number :
edsair.doi...........e7eda5ab87f08b7b84d63e8d5865ab41
Full Text :
https://doi.org/10.4236/am.2014.56082