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Forecasting with a parsimonious subset VAR model

机译:使用简约子集VAR模型进行预测

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This paper suggests using a unit t-value criterion in imposing restrictions on lags to formulate a subset vector autoregressive (VAR) model for the purpose of point forecasts. Among any other alternative models nested to the initial VAR model, this less restrictive modeling strategy produces the smallest log determinant of the residual covariance matrix adjusted by degrees of freedom. Each equation of the finally derived subset VAR model has a maximized R~2 adjusted by degrees of freedom in samples and consequently a minimized 1-step-ahead prediction error in out-of-samples. The applicability of this modeling strategy is excised to the case of a bivariate VAR model for output growth and inflation.
机译:本文建议使用单位t值准则对时滞施加限制,以建立用于点预测的子集矢量自回归(VAR)模型。在嵌套到初始VAR模型的任何其他替代模型中,这种限制性较小的建模策略可生成通过自由度调整的残差协方差矩阵的最小对数行列式。最终导出的子集VAR模型的每个方程具有通过样本中的自由度调整的最大R〜2,因此在样本外具有最小的1步提前预测误差。这种建模策略的适用性仅限于用于产出增长和通胀的双变量VAR模型的情况。

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