Bayesian Analysis and Markov Chain Monte Carlo Simulation

I
Elena Medova

Elena Medova

Cambridge Systems Associates Limited, Cambridge, UK

University of Cambridge, Cambridge, UK

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First published: 15 September 2008
Citations: 1

Abstract

This chapter describes the use of hierarchical Bayesian analysis using Markov chain Monte Carlo (MCMC) estimation to obtain the parameters of a peaks-over-threshold (POT) extreme value theory model of extreme operational losses. Principal MCMC techniques are described and a simple example which illustrates the concepts, including economic capital allocation, is discussed.

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