A Bayesian Approach To Heavy-Tailed Finite Mixture Autoregressive Models
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Date
2020
Journal Title
Journal ISSN
Volume Title
Publisher
Mdpi
Open Access Color
GOLD
Green Open Access
No
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OpenAIRE Views
Publicly Funded
No
Abstract
In this paper, a Bayesian analysis of finite mixture autoregressive (MAR) models based on the assumption of scale mixtures of skew-normal (SMSN) innovations (called SMSN-MAR) is considered. This model is not simultaneously sensitive to outliers, as the celebrated SMSN distributions, because the proposed MAR model covers the lightly/heavily-tailed symmetric and asymmetric innovations. This model allows us to have robust inferences on some non-linear time series with skewness and heavy tails. Classical inferences about the mixture models have some problematic issues that can be solved using Bayesian approaches. The stochastic representation of the SMSN family allows us to develop a Bayesian analysis considering the informative prior distributions in the proposed model. Some simulations and real data are also presented to illustrate the usefulness of the proposed models.
Description
Maleki, Mohsen/0000-0002-2774-2464; Pho, Kim-Hung/0000-0003-0410-8839; Pho, Kim Hung/0000-0001-9743-1306
Keywords
Gibbs Sampling, Mcmc Method, Non-Linear Time Series, Finite Mixture Autoregressive Models, Smsn Distributions, Statistics and Probability, Gaussian Mixture Models, Artificial intelligence, Time series, FOS: Political science, Bayesian inference, Mixture Models, Social Sciences, Skew Distributions, FOS: Law, Skew, Finite Mixtures, Bayesian probability, Autoregressive model, Skewness, FOS: Economics and business, Artificial Intelligence, Skew Distributions and Applications in Statistics, Gibbs sampling; MCMC method; non-linear time series; finite mixture autoregressive models; SMSN distributions, FOS: Mathematics, Series (stratigraphy), Econometrics, Political science, Biology, Hidden Markov Models, STAR model, Mixture model, Autoregressive integrated moving average, Statistics, Politics, Paleontology, Applied mathematics, Computer science, Economics, Econometrics and Finance, Modeling and Forecasting Financial Volatility, Outlier, Computer Science, Physical Sciences, Telecommunications, Model-Based Clustering with Mixture Models, Representation (politics), Law, Mathematics, Finance
Fields of Science
01 natural sciences, 0101 mathematics
Citation
Mahmoudi, Mohammad Reza...et al. (2020)."A Bayesian Approach to Heavy-Tailed Finite Mixture Autoregressive Models", Symmetry-Basel, Vol. 12, No. 6.
WoS Q
Q2
Scopus Q
Q2

OpenCitations Citation Count
6
Source
Symmetry
Volume
12
Issue
6
Start Page
End Page
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Citations
CrossRef : 8
Scopus : 9
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