Dynamic operational risk: modeling dependence and combining different sources of information
Gareth W. Peters,
Pavel Shevchenko and
Mario V. Wüthrich
Journal of Operational Risk
Abstract:
ABSTRACT In this paper, we model dependence between operational risks by allowing risk profiles to evolve stochastically in time and to be dependent. This allows for a flexible correlation structure where the dependence between frequencies of different risk categories and between severities of different risk categories as well as within risk categories can be modeled. The model is estimated using Bayesian inference methodology, allowing for a combination of internal data, external data and expert opinion in the estimation procedure. We use a specialized Markov chain Monte Carlo simulation methodology known as slice sampling to obtain samples from the resulting posterior distribution and estimate the model parameters.
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Persistent link: https://EconPapers.repec.org/RePEc:rsk:journ3:2160914
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