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Generalized Extreme Value Distribution with Time-Dependence Using the AR and MA Models in State Space Form
- Publication Year :
- 2009
-
Abstract
- A new state space approach is proposed to model the time- dependence in an extreme value process. The generalized extreme value distribution is extended to incorporate the time-dependence using a state space representation where the state variables either follow an autoregressive (AR) process or a moving average (MA) process with innovations arising from a Gumbel distribution. Using a Bayesian approach, an efficient algorithm is proposed to implement Markov chain Monte Carlo method where we exploit a very accurate approximation of the Gumbel distribution by a ten-component mixture of normal distributions. The methodology is illustrated using extreme returns of daily stock data. The model is fitted to a monthly series of minimum returns and the empirical results support strong evidence for time-dependence among the observed minimum returns.
- Subjects :
- Statistics and Probability
Markov chain
State-space representation
Extreme values, Generalized extreme value distribution, Markov chain Monte Carlo, Mixture sampler, State space model, Stock returns
Applied Mathematics
jel:C51
Markov chain Monte Carlo
jel:C11
Normal distribution
Computational Mathematics
symbols.namesake
jel:G17
Computational Theory and Mathematics
Gumbel distribution
Moving average
Econometrics
Generalized extreme value distribution
symbols
Applied mathematics
Extreme value theory
Mathematics
Subjects
Details
- Database :
- OpenAIRE
- Accession number :
- edsair.doi.dedup.....ea6ab6ed1af873a5076dcb6a87612486