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Bayesian modeling of dynamic extreme values: extension of generalized extreme value distributions with latent stochastic processes
Authors:Jouchi Nakajima  Tsuyoshi Kunihama  Yasuhiro Omori
Institution:1. Bank of Japan, Tokyo, Japan;2. Department of Economics, Nagoya University, Nagoya, Japan;3. Faculty of Economics, University of Tokyo, Tokyo, Japan
Abstract:This paper develops Bayesian inference of extreme value models with a flexible time-dependent latent structure. The generalized extreme value distribution is utilized to incorporate state variables that follow an autoregressive moving average (ARMA) process with Gumbel-distributed innovations. The time-dependent extreme value distribution is combined with heavy-tailed error terms. An efficient Markov chain Monte Carlo algorithm is proposed using a state-space representation with a finite mixture of normal distributions to approximate the Gumbel distribution. The methodology is illustrated by simulated data and two different sets of real data. Monthly minima of daily returns of stock price index, and monthly maxima of hourly electricity demand are fit to the proposed model and used for model comparison. Estimation results show the usefulness of the proposed model and methodology, and provide evidence that the latent autoregressive process and heavy-tailed errors play an important role to describe the monthly series of minimum stock returns and maximum electricity demand.
Keywords:ARMA process  electricity demand  extreme values  generalized extreme value distribution  mixture sampler  stock returns
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