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首页> 外文期刊>Open Journal of Modelling and Simulation >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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A Simulation Study on the Performances of Classical Var and Sims-Zha Bayesian Var Models in the Presence of Autocorrelated Errors

机译:存在自相关误差的经典变量和Sims-Zha贝叶斯变量模型性能的仿真研究

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摘要

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.
机译:众所周知,误差之间的高度正相关性通常会导致1)回归系数的标准误差严重低估; 2)预测间隔过宽。本文着手研究存在自相关误差的经典VAR模型和Sims-Zha Bayesian VAR模型的性能。短期内考虑自相关水平(-0.99,-0.95,-0.9,-0.85,-0.8,0.8,0.85,0.9,0.95,0.99);中期(T = 32,64)和长期(T = 128,256)。 10,000个模拟的结果表明,短期内具有宽松先验的BVAR模型适合负自相关,具有紧密先验的BVAR模型适合短期内正相关。对于中期而言,先验条件宽松的BVAR模型适用于考虑的自相关水平,除少数情况外。最后,从长远来看,经典VAR适用于所有考虑的自相关水平,但在某些情况下,首选BVAR模型。因此,这项工作得出的结论是,经典VAR和Sims-Zha Bayesian VAR的性能在自相关级别和时间序列长度方面有所不同。

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