A vector autoregression (VAR) model is powerful for analyzing economic data as it can be used to simultaneously handle multiple time series from different sources. However, in the VAR model, we need to address the problem of substantial coefficient dimensionality, which would cause some computational problems for coefficient inference. To reduce the dimensionality, one could take model structures into account based on prior knowledge. In this paper, group structures of the coefficient matrices are considered. Because of the different types of VAR structures, corresponding Markov chain Monte Carlo algorithms are proposed to generate posterior samples for performing inference of the structure selection. Simulation studies and a real example are used to demonstrate the performances of the proposed Bayesian approaches.
机构:
Monetary Policy Department, Central Bank of Nigeria, No 33 Tafawa Balewa Way, Central Business District, P.M.B. 0187, Garki, AbujaMonetary Policy Department, Central Bank of Nigeria, No 33 Tafawa Balewa Way, Central Business District, P.M.B. 0187, Garki, Abuja
Onipede S.F.
Bashir N.A.
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Monetary Policy Department, Central Bank of Nigeria, No 33 Tafawa Balewa Way, Central Business District, P.M.B. 0187, Garki, AbujaMonetary Policy Department, Central Bank of Nigeria, No 33 Tafawa Balewa Way, Central Business District, P.M.B. 0187, Garki, Abuja
Bashir N.A.
Abubakar J.
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Monetary Policy Department, Central Bank of Nigeria, No 33 Tafawa Balewa Way, Central Business District, P.M.B. 0187, Garki, AbujaMonetary Policy Department, Central Bank of Nigeria, No 33 Tafawa Balewa Way, Central Business District, P.M.B. 0187, Garki, Abuja
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Univ Calif Los Angeles, Dept Stat, Los Angeles, CA USA
Univ North Carolina Chapel Hill, Dept Stat & Operat Res, Chapel Hill, NC USAUniv Florida, Dept Stat, Gainesville, FL 32611 USA
Gmichail, George Michailidis
Zhang, Zhengwu
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机构:Univ Florida, Dept Stat, Gainesville, FL 32611 USA