Modelling nonlinearities and heavy tails via threshold normal mixture GARCH models |
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Authors: | D. Giannikis |
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Affiliation: | Department of Statistics, Athens University of Economics and Business, Patission 76, 10434 Athens, Greece |
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Abstract: | A new class of flexible threshold normal mixture GARCH models is proposed for the analysis and modelling of the stylized facts appeared in many financial time series. A Bayesian stochastic method is developed and presented for the analysis of the proposed model allowing for automatic model determination and estimation of the thresholds and their unknown number. A computationally feasible algorithm that explores the posterior distribution of the threshold models is designed using Markov chain Monte Carlo stochastic search methods. A simulation study is conducted to assess the performance of the proposed method, and an empirical application of the proposed model is illustrated using real data. |
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Keywords: | Autoregressive conditional heteroscedasticity Bayesian inference Markov chain Monte Carlo Stochastic search Value at Risk |
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