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首页> 外文期刊>Journal of Econometrics >Dynamic factor models with infinite-dimensional factor space: Asymptotic analysis
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Dynamic factor models with infinite-dimensional factor space: Asymptotic analysis

机译:无限尺寸因子空间的动态因子模型:渐近分析

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Factor models, all particular cases of the Generalized Dynamic Factor Model (GDFM) introduced in Forni et al., (2000), have become extremely popular in the theory and practice of large panels of time series data. The asymptotic properties (consistency and rates) of the corresponding estimators have been studied in Forni et al. (2004). Those estimators, however, rely on Brillinger's concept of dynamic principal components, and thus involve two-sided filters, which leads to rather poor forecasting;performances. No such problem arises with estimators based on standard (static) principal components, which have been dominant in this literature. On the other hand, the consistency of those static estimators requires the assumption that the space spanned by the factors has finite dimension, which severely restricts their generality prohibiting, for instance, autoregressive factor loadings. This paper derives the asymptotic properties of a semiparametric estimator of the loadings and common shocks based on one-sided filters recently proposed by Forni et al., (2015). Consistency and exact rates of convergence are obtained for this estimator, under a general class of GDFMs that does not require a finite-dimensional factor space. A Monte Carlo experiment and an empirical exercise on US macroeconomic data corroborate those theoretical results and demonstrate the excellent performance of those estimators in out-of-sample forecasting. (C) 2017 Elsevier B.V. All rights reserved.
机译:因子模型,即Forni等人(2000年)提出的广义动态因子模型(GDFM)的所有特殊情况,在时间序列数据的大型面板的理论和实践中已经非常流行。Forni等人(2004)研究了相应估计量的渐近性质(一致性和速率)。然而,这些估计器依赖于Brillinger的动态主成分概念,因此涉及双边滤波器,这导致相当糟糕的预测;表演。基于标准(静态)主成分的估计器不存在这样的问题,这在本文献中占主导地位。另一方面,这些静态估计器的一致性要求假设因子所跨越的空间具有有限维,这严重限制了它们的通用性,例如禁止自回归因子加载。本文基于Forni等人(2015)最近提出的单边滤波器,推导了荷载和常见冲击的半参数估计的渐近性质。在不需要有限维因子空间的一般GDFM类下,得到了该估计量的一致性和精确收敛速度。蒙特卡罗实验和对美国宏观经济数据的实证检验证实了这些理论结果,并证明了这些估计器在样本外预测中的出色性能。(C) 2017爱思唯尔B.V.版权所有。

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