Bayesian Non-Parametric Mixtures of GARCH(1,1) Models
Author(s) -
John W. Lau,
Edward Cripps
Publication year - 2012
Publication title -
journal of probability and statistics
Language(s) - English
Resource type - Journals
eISSN - 1687-9538
pISSN - 1687-952X
DOI - 10.1155/2012/167431
Subject(s) - autoregressive conditional heteroskedasticity , volatility (finance) , econometrics , dirichlet process , markov chain monte carlo , volatility clustering , mathematics , stochastic volatility , bayesian probability , nonparametric statistics , cluster analysis , bayesian inference , hierarchical dirichlet process , dirichlet distribution , statistics , mathematical analysis , boundary value problem
Traditional GARCH models describe volatility levels that evolve smoothly over time, generated by a single GARCH regime. However, nonstationary time series data may exhibit abrupt changes in volatility, suggesting changes in the underlying GARCH regimes. Further, the number and times of regime changes are not always obvious. This article outlines a nonparametric mixture of GARCH models that is able to estimate the number and time of volatility regime changes by mixing over the Poisson-Kingman process. The process is a generalisation of the Dirichlet process typically used in nonparametric models for time-dependent data provides a richer clustering structure, and its application to time series data is novel. Inference is Bayesian, and a Markov chain Monte Carlo algorithm to explore the posterior distribution is described. The methodology is illustrated on the Standard and Poor's 500 financial index
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