分析协整时间序列共同周期特征的统一框架

G. Cubadda
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引用次数: 29

摘要

本文提供了一个统一的框架,在这个框架中,可以检验不同形式的共同周期特征的共存,并将其强加于协整VAR模型。这一目标是通过引入一个新的公共周期特征的概念来实现的,即多项式序列相关公共特征的弱形式,它包含了前面的大部分公共特征。通过降秩回归获得统计推断,并通过对新模型参数的过度识别限制的测试来检测常见周期性特征的替代形式。然后提出了一些迭代估计过程,用于同时对不同形式的共同特征进行建模。通过对美国经济周期指标的实证调查,阐述了相关概念和方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Unifying Framework for Analysing Common Cyclical Features in Cointegrated Time Series
This paper provides a unifying framework in which the coexistence of different form of common cyclical features can be tested and imposed to a cointegrated VAR model. This goal is reached by introducing a new notion of common cyclical features, namely the weak form of polynomial serial correlation common features, which encompasses most of the previous ones. Statistical inference is obtained by means of reduced-rank regression, and alternative forms of common cyclical features are detected by means of tests for over-identifying restrictions on the parameters of the new model. Some iterative estimation procedures are then proposed for simultaneously modelling different forms of common features. Concepts and methods are illustrated by an empirical investigation of the US business cycle indicators.
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