Gibbs Sampling for Double Seasonal Autoregressive Models
Author(s) -
Ayman A. Amin,
Mohamed A. Ismail
Publication year - 2015
Publication title -
communications for statistical applications and methods
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.326
H-Index - 6
eISSN - 2383-4757
pISSN - 2287-7843
DOI - 10.5351/csam.2015.22.6.557
Subject(s) - gibbs sampling , autoregressive model , mathematics , statistics , bayesian probability , posterior probability , multivariate statistics , sampling (signal processing) , bayesian inference , metropolis–hastings algorithm , bayesian linear regression , econometrics , computer science , markov chain monte carlo , computer vision , filter (signal processing)
In this paper we develop a Bayesian inference for a multiplicative double seasonal autoregressive (DSAR) model by implementing a fast, easy and accurate Gibbs sampling algorithm. We apply the Gibbs sampling to approximate empirically the marginal posterior distributions after showing that the conditional posterior distribution of the model parameters and the variance are multivariate normal and inverse gamma, respectively. The proposed Bayesian methodology is illustrated using simulated examples and real-world time series data.
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