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首页> 外文期刊>Journal of Forecasting >Impulse Response Analysis in Vector Autoregressions with Unknown Lag Order
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Impulse Response Analysis in Vector Autoregressions with Unknown Lag Order

机译:具有未知滞后阶的向量自回归中的脉冲响应分析

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摘要

We show that the effects of overfitting and underfitting a vector autoregressive (VAR) model are strongly asymmetric for VAR summary statistics involving higher-order dynamics (such as impulse response functions, variance decompositions, or long-run forecasts). Underfit models often underestimate the true dynamics of the population process and may result in spuriously tight confidence intervals. These insights are important for applied work, regardless of how the lag order is determined. In addition, they provide a new perspective on the trade-offs between alternative lag order selection criteria. We provide evidence that, contrary to conventional wisdom, for many statistics of interest to VAR users the point and interval estimates based on the AIC compare favourably to those based on the more parsimonious Schwarz Information Criterion and Hannan-Quinn Criterion.
机译:我们显示,对于涉及较高阶动力学(例如脉冲响应函数,方差分解或长期预测)的VAR摘要统计信息,过度拟合和不拟合向量自回归(VAR)模型的影响强烈不对称。欠拟合模型通常会低估人口过程的真实动态,并可能导致虚假的紧密置信区间。无论如何确定滞后顺序,这些见解对于应用工作都很重要。此外,它们为替代滞后订单选择标准之间的取舍提供了新的视角。我们提供的证据表明,与传统观点相反,对于VAR用户感兴趣的许多统计数据,基于AIC的点和间隔估计值与基于更简约的Schwarz信息标准和Hannan-Quinn标准的估计值相比更为有利。

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