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A Bayesian nonlinearity test for threshold moving average models
Authors:Qiang Xia  Jiazhu Pan  Zhiqiang Zhang  Jinshan Liu
Affiliation:1. South China Agricultural University;2. University of Strathclyde;3. East China Normal University;4. E‐mail:
Abstract:We propose a Bayesian test for nonlinearity of threshold moving average (TMA) models. First, we obtain the marginal posterior densities of all parameters, including the threshold and delay, of the TMA model using Gibbs sampler with the Metropolis–Hastings algorithm. And then, we adopt reversible‐jump Markov chain Monte Carlo methods to calculate the posterior probabilities for MA and TMA models. Posterior evidence in favour of the TMA model indicates threshold nonlinearity. Simulation experiments and a real example show that our method works very well in distinguishing MA and TMA models.
Keywords:Bayesian inference  MA models  Gibbs sampler  Metropolis‐Hastings algorithm  RJMCMC methods  TMA models
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