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On the Performances of Classical VAR and Sims-Zha Bayesian VAR Models in the Presence of Collinearity and Autocorrelated Error Terms
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作者 M. O. Adenomon V. A. Michael O. P. Evans 《Open Journal of Statistics》 2016年第1期96-132,共37页
In time series literature, many authors have found out that multicollinearity and autocorrelation usually afflict time series data. In this paper, we compare the performances of classical VAR and Sims-Zha Bayesian VAR... In time series literature, many authors have found out that multicollinearity and autocorrelation usually afflict time series data. In this paper, we compare the performances of classical VAR and Sims-Zha Bayesian VAR models with quadratic decay on bivariate time series data jointly influenced by collinearity and autocorrelation. We simulate bivariate time series data for different collinearity levels (﹣0.99, ﹣0.95, ﹣0.9, ﹣0.85, ﹣0.8, 0.8, 0.85, 0.9, 0.95, 0.99) and autocorrelation levels (﹣0.99, ﹣0.95, ﹣0.9, ﹣0.85, ﹣0.8, 0.8, 0.85, 0.9, 0.95, 0.99) for time series length of 8, 16, 32, 64, 128, 256 respectively. The results from 10,000 simulations reveal that the models performance varies with the collinearity and autocorrelation levels, and with the time series lengths. In addition, the results reveal that the BVAR4 model is a viable model for forecasting. Therefore, we recommend that the levels of collinearity and autocorrelation, and the time series length should be considered in using an appropriate model for forecasting. 展开更多
关键词 Vector Autoregression (var) Classical var bayesian var (bvar) Sims-Zha Prior COLLINEARITY Autocorrelation
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A Simulation Study on the Performances of Classical Var and Sims-Zha Bayesian Var Models in the Presence of Autocorrelated Errors
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作者 M. O. Adenomon V. A. Michael O. P. Evans 《Open Journal of Modelling and Simulation》 2015年第4期146-158,共13页
It is well known that a high degree of positive dependency among the errors generally leads to 1) serious underestimation of standard errors for regression coefficients;2) prediction intervals that are excessively wid... It is well known that a high degree of positive dependency among the errors generally leads to 1) serious underestimation of standard errors for regression coefficients;2) prediction intervals that are excessively wide. This paper set out to study the performances of classical VAR and Sims-Zha Bayesian VAR models in the presence of autocorrelated errors. Autocorrelation levels of (-0.99, -0.95, -0.9, -0.85, -0.8, 0.8, 0.85, 0.9, 0.95, 0.99) were considered for short term (T = 8, 16);medium term (T = 32, 64) and long term (T = 128, 256). The results from 10,000 simulation revealed that BVAR model with loose prior is suitable for negative autocorrelations and BVAR model with tight prior is suitable for positive autocorrelations in the short term. While for medium term, the BVAR model with loose prior is suitable for the autocorrelation levels considered except in few cases. Lastly, for long term, the classical VAR is suitable for all the autocorrelation levels considered except in some cases where the BVAR models are preferred. This work therefore concludes that the performance of the classical VAR and Sims-Zha Bayesian VAR varies in terms of the autocorrelation levels and the time series lengths. 展开更多
关键词 Simulation PERFORMANCES Vector Autoregression (var) CLASSICAL var Sims-Zha Prior bayesian var (bvar) Autocorrelated Errors
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Short Term Forecasting Performances of Classical VAR and Sims-Zha Bayesian VAR Models for Time Series with Collinear Variables and Correlated Error Terms
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作者 M. O. Adenomon V. A. Michael O. P. Evans 《Open Journal of Statistics》 2015年第7期742-753,共12页
Forecasts can either be short term, medium term or long term. In this work we considered short term forecast because of the problem of limited data or time series data that is often encounter in time series analysis. ... Forecasts can either be short term, medium term or long term. In this work we considered short term forecast because of the problem of limited data or time series data that is often encounter in time series analysis. This simulation study considered the performances of the classical VAR and Sims-Zha Bayesian VAR for short term series at different levels of collinearity and correlated error terms. The results from 10,000 iteration revealed that the BVAR models are excellent for time series length of T=8 for all levels of collinearity while the classical VAR is effective for time series length of T=16 for all collinearity levels except when ρ = -0.9 and ρ = -0.95. We therefore recommended that for effective short term forecasting, the time series length, forecasting horizon and the collinearity level should be considered. 展开更多
关键词 Short term Forecasting Vector Autoregressive (var) bayesian var (bvar) Sims-Zha Prior COLLINEARITY Error Terms
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太阳黑子冲击与中国经济稳定——基于BVAR模型的计量研究
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作者 朱培金 《温州大学学报(社会科学版)》 2017年第1期84-91,共8页
本文运用1999年第一季度至2014年第一季度的宏观经济数据,从企业家信心指数中分离出无法被宏观经济基本面所解释的太阳黑子冲击,采用贝叶斯VAR(BVAR)模型动态分析了太阳黑子冲击与中国经济稳定性之间的关系。研究结果表明:格兰杰因果检... 本文运用1999年第一季度至2014年第一季度的宏观经济数据,从企业家信心指数中分离出无法被宏观经济基本面所解释的太阳黑子冲击,采用贝叶斯VAR(BVAR)模型动态分析了太阳黑子冲击与中国经济稳定性之间的关系。研究结果表明:格兰杰因果检验揭示企业家信心指数与宏观经济关系密切;宏观经济冲击对太阳黑子冲击的影响是短暂和微弱的,但是太阳黑子冲击对宏观经济变量具有典型的驼峰状影响效应;货币政策在应对太阳黑子冲击而言是积极的,但是执行力度不足,不足以抵消通胀上升从而导致实际利率下降;方差分解表明太阳黑子冲击对宏观经济变量波动的贡献总体而言不大,宏观经济变量波动主要来自于其它宏观经济冲击。 展开更多
关键词 企业家信心指数 太阳黑子冲击 动物精神 货币政策 贝叶斯var(bvar)
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