向量自回归移动平均模型:综述。

Marie-Christine Düker, David S Matteson, Ruey S Tsay, Ines Wilms
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引用次数: 0

摘要

向量自回归移动平均(VARMA)模型是一种强大的通用模型,用于分析多个时间序列之间的动态。虽然VARMA模型包含向量自回归(VAR)模型,但它们在经验应用中的受欢迎程度主要由后者主导。VAR模型的简单性能否完全解释这一现象?也许许多VAR模型的用户还没有完全理解VAR模型能提供什么。这篇综述的目的是为寻求VARMA模型的优势和能力的研究人员和实践者提供一个全面的资源。我们首先回顾VARMA模型固有的识别挑战,从而包括经典和现代识别方案,我们继续沿着相同的路线进行VARMA模型的估计、规范和诊断。然后,我们强调了VARMA模型在格兰杰因果分析、预测和结构分析方面的实际效用,以及VARMA模型的最新进展和扩展,以进一步促进其在实践中的采用。最后,我们讨论了一些有趣的未来研究方向,与VAR模型的子类相比,VARMA模型可以在应用中发挥其潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Vector AutoRegressive Moving Average Models: A Review.

Vector AutoRegressive Moving Average (VARMA) models form a powerful and general model class for analyzing dynamics among multiple time series. While VARMA models encompass the Vector AutoRegressive (VAR) models, their popularity in empirical applications is dominated by the latter. Can this phenomenon be explained fully by the simplicity of VAR models? Perhaps many users of VAR models have not fully appreciated what VARMA models can provide. The goal of this review is to provide a comprehensive resource for researchers and practitioners seeking insights into the advantages and capabilities of VARMA models. We start by reviewing the identification challenges inherent to VARMA models thereby encompassing classical and modern identification schemes and we continue along the same lines regarding estimation, specification, and diagnosis of VARMA models. We then highlight the practical utility of VARMA models in terms of Granger Causality analysis, forecasting and structural analysis as well as recent advances and extensions of VARMA models to further facilitate their adoption in practice. Finally, we discuss some interesting future research directions where VARMA models can fulfill their potentials in applications as compared to their subclass of VAR models.

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