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Bayesian estimation of switching ARMA models

机译:转换ARMA模型的贝叶斯估计

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Switching ARMA processes have recently appeared as an efficient modelling to nonlinear time-series models, because they can represent multiple or heterogeneous dynamics through simple components. The levels of dependence between the observations are double: at a first level, the parameters of the model are selected by a Markovian procedure. At a second level, the next observation is generated according to a standard time-series model. When the model involves a moving average structure, the complexity of the resulting likelihood function is such that simulation techniques, like those pro- posed by Shephard (1994, Biometrika 81, 115-131) and Billio and Monfort (1998, Journal of Statistical Planning and Inference 68, 65-103), are necessary to derive an inference on the parameters of the model. We propose in this paper a Bayesian approach with a non-informative prior distribution developed in Mengersen and Robert (1996, Bayesian Statistics 5. Oxford University Press, Oxford, pp. 255-276) and Robert and Titterington (1998, Statistics and Computing 8(2), 145-158) in the setup of mixtures of distributions and hidden Markov models, respectively. The computation of the Bayes estimates relies on MCMC techniques which iteratively simulate missing states, innovations and parameters until convergence. The performances of the method are illustrated on several simulated examples. This work also extends the papers by Chib and Greenberg (1994, Journal of Econometrics 64, 183-206) and Chib (1996, Journal of Econometrics 75(1), 79-97) which deal with ARMA and hidden Markov models, respectively.
机译:最近,切换ARMA流程已成为一种有效的建模方法,可以转换为非线性时间序列模型,因为它们可以通过简单的组件表示多个或异构的动力学。观测值之间的依赖程度是两倍:在第一层次上,通过马尔可夫过程选择模型的参数。在第二级,根据标准时间序列模型生成下一个观察值。当模型包含移动平均结构时,所得似然函数的复杂度应使模拟技术,如Shephard(1994,Biometrika 81,115-131)和Billio and Monfort(1998,Journal of Statistics Planning)提出的技术和推论68,65-103)来推论模型的参数是必要的。我们在本文中提出一种在Mengersen和Robert(1996,贝叶斯统计5.牛津大学出版社,牛津,255-276页)和Robert and Titterington(1998,统计和计算8)中开发的具有非信息先验分布的贝叶斯方法。 (2),145-158)分别建立分布混合和隐马尔可夫模型。贝叶斯估计的计算依赖于MCMC技术,该技术反复模拟缺失的状态,创新和参数,直到收敛为止。在几个仿真示例中说明了该方法的性能。这项工作还扩展了Chib和Greenberg(1994,Journal of Econometrics 64,183-206)和Chib(1996,Journal of Econometrics 75(1),79-97)的论文,它们分别涉及ARMA模型和隐马尔可夫模型。

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