非基础结构VARMA模型的识别与估计

Identification and Estimation in Non-Fundamental Structural VARMA Models

Review of Economic Studies · 2019
被引 36
人大 A+FT50ABS 4*

中文导读

指出高斯假设是结构VARMA模型识别困难的主因,提出在非高斯框架下通过假设结构冲击瞬时和序列独立来解决静态与动态识别问题,并开发了适应非基础MA动态的参数和半参数估计方法。

Abstract

Abstract The basic assumption of a structural vector autoregressive moving average (SVARMA) model is that it is driven by a white noise whose components are uncorrelated or independent and can be interpreted as economic shocks, called “structural” shocks. When the errors are Gaussian, independence is equivalent to non-correlation and these models face two identification issues. The first identification problem is “static” and is due to the fact that there is an infinite number of linear transformations of a given random vector making its components uncorrelated. The second identification problem is “dynamic” and is a consequence of the fact that, even if a SVARMA admits a non-invertible moving average (MA) matrix polynomial, it may feature the same second-order dynamic properties as a VARMA process in which the MA matrix polynomials are invertible (the fundamental representation). The aim of this article is to explain that these difficulties are mainly due to the Gaussian assumption, and that both identification challenges are solved in a non-Gaussian framework if the structural shocks are assumed to be instantaneously and serially independent. We develop new parametric and semi-parametric estimation methods that accommodate non-fundamentalness in the MA dynamics. The functioning and performances of these methods are illustrated by applications conducted on both simulated and real data.

非高斯SVARMA模型结构冲击识别非基本性参数与半参数估计