A Univariate Time Varying Analysis of Periodic ARMA Processes

M. Karanasos, A. Paraskevopoulos, Stavros Dafnos
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引用次数: 5

Abstract

The standard approach for studying the periodic ARMA model with coefficients that vary over the seasons is to express it in a vector form. In this paper we introduce an alternative method which views the periodic formulation as a time varying univariate process and obviates the need for vector analysis. The specification, interpretation, and solution of a periodic ARMA process enable us to formulate a forecasting method which avoids recursion and allows us to obtain analytic expressions of the optimal predictors. Our results on periodic models are general, analogous to those for stationary specifications, and place the former on the same computational basis as the latter.
周期ARMA过程的单变量时变分析
研究系数随季节变化的周期性ARMA模型的标准方法是将其表示为矢量形式。在本文中,我们介绍了一种替代方法,它将周期公式视为时变的单变量过程,从而避免了向量分析的需要。周期性ARMA过程的规范、解释和求解使我们能够制定一种避免递归的预测方法,并使我们能够获得最优预测因子的解析表达式。我们在周期模型上的结果是一般的,类似于那些固定规格,并将前者置于与后者相同的计算基础上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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