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PC-VAR Estimation of Vector Autoregressive Models

机译:向量自回归模型的PC-VAR估计

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In this paper PC-VAR estimation of vector autoregressive models (VAR) is proposed. The estimation strategy successfully lessens the curse of dimensionality affecting VAR models, when estimated using sample sizes typically available in quarterly studies. The procedure involves a dynamic regression using a subset of principal components extracted from a vector time series, and the recovery of the implied unrestricted VAR parameter estimates by solving a set of linear constraints. PC-VAR and OLS estimation of unrestricted VAR models show the same asymptotic properties. Monte Carlo results strongly support PC-VAR estimation, yielding gains, in terms of both lower bias and higher efficiency, relatively to OLS estimation of high dimensional unrestricted VAR models in small samples. Guidance for the selection of the number of components to be used in empirical studies is provided.
机译:本文提出了向量自回归模型(VAR)的PC-VAR估计。当使用季度研究中通常可用的样本量进行估算时,估算策略可成功减轻影响VAR模型的维数的祸害。该过程涉及使用从向量时间序列中提取的主成分子集进行动态回归,并通过求解一组线性约束来恢复隐含的无限制VAR参数估计值。无限制VAR模型的PC-VAR和OLS估计显示出相同的渐近性质。相对于小样本中高维无限制VAR模型的OLS估计,Monte Carlo结果强烈支持PC-VAR估计,从而以较低的偏差和较高的效率产生了收益。提供了选择用于经验研究的组件数量的指南。

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