大型数据集的非平稳动态因子模型

M. Barigozzi, Marco Lippi, Matteo Luciani
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引用次数: 49

摘要

我们研究了一个大维度非平稳动态因子模型,其中(1)因子Ft为I(1)和奇异,即Ft具有维数r并且由q小于r的q动态冲击驱动,(2)特异成分为I(0)或I(1)。在这些假设下,因子Ft是协整的,并由奇异误差修正模型建模。我们提供了一致估计的条件,当横截面尺寸n和时间维度T趋近于无穷大时,这些因素,载荷,冲击,ECM系数以及脉冲响应函数。最后,我们通过蒙特卡洛练习和实际数据应用探讨了我们的估计器的数值性质,其中我们研究了货币政策和供应冲击对美国经济的影响。
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Non-Stationary Dynamic Factor Models for Large Datasets
We study a Large-Dimensional Non-Stationary Dynamic Factor Model where (1) the factors Ft are I (1) and singular, that is Ft has dimension r and is driven by q dynamic shocks with q less than r, (2) the idiosyncratic components are either I (0) or I (1). Under these assumption the factors Ft are cointegrated and modeled by a singular Error Correction Model. We provide conditions for consistent estimation, as both the cross-sectional size n, and the time dimension T, go to infinity, of the factors, the loadings, the shocks, the ECM coefficients and therefore the Impulse Response Functions. Finally, the numerical properties of our estimator are explored by means of a MonteCarlo exercise and of a real-data application, in which we study the effects of monetary policy and supply shocks on the US economy.
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