比较金砖国家和欧佩克国家通胀的多元模型预测

IF 2.1 Q4 Economics, Econometrics and Finance
O. Ajayi
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引用次数: 3

摘要

目的——本研究确定了在不同经济环境下预测通货膨胀的最合适的多元模型。在指定多变量模型时,研究测试了变量的积分阶数和非平稳变量的积分级数。对于非平稳变量,本研究考察了它们是否是协整的。Engle和Granger(1987)提出,协整方程可以表示为一个误差校正模型,该模型结合了变量的变化和水平,使得所有元素都是静止的。然而,如果所有数据都是差分的,则使用协整数据估计的VAR将被错误指定,因为长期信息将被省略,并且如果所有数据在级别中使用,则将省略平稳性诱导约束。此外,包括两个层次的变量和差异应符合平稳性要求。然而,它们将省略可能改进模型的协整限制。当然,这些约束条件将渐近地得到满足;但是可以通过施加约束来实现效率提高和改进的多步骤预测(Engle和Granger 1987,第259页)。因此,本研究检验了一体化的顺序,并比较了金砖国家和欧佩克国家不同多元模型的通胀预测性能。研究方法——考虑了以下方法;第一种方法是构建一个差分VAR模型(平稳形式)来预测通货膨胀。第二种方法是在不施加协整限制的情况下构建VECM。第三种方法是构建对VECM施加协整限制的VEC。这将有助于了解通过VEC实施协整限制是否能改善长期预测。研究局限性——所提出的多变量模型侧重于差分和协整限制,以确保数据的平稳性,并根据其集成水平对可用变量进行组合和指定,以预测通货膨胀。例如,VAR模型是基于差分变量I(0)来估计的;VECM和VEC模型也是如此,其中差分变量和I(I)协变量的线性组合是平稳的。在未来,提出了以经济理论为指导的多元模型,而不是以变量的积分顺序为指导的模型。调查结果-结果表明,通货膨胀的预测表现取决于经济的性质,以及该国是经历更高的通货膨胀还是经历低通货膨胀。例如,以特定协整方程形式包含长期信息的模型通常会提高金砖国家和一个有低通胀历史的欧佩克国家(沙特阿拉伯)的通胀预测性能。实际意义——这项研究将改善决策者如何选择合适的模型来预测不同经济环境下的通货膨胀的决策。原创性/价值-尽管许多新兴经济体(如欧佩克和金砖国家)对全球经济具有重要意义,但这些方法尚未用于预测这些国家的通胀。本研究通过使用多元VAR和欧佩克和金砖国家经济体的协整模型评估通胀预测性能,填补了这一空白。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
COMPARING MULTIVARIATE MODELS’ FORECASTS OF INFLATION FOR BRICS AND OPEC COUNTRIES
Purpose – This study identifies the most appropriately selected multivariate model for forecasting inflation in different economic environments. In specifying the multivariate models, the study test for the orders of integration of variables and for those that are nonstationary. For non-stationary variables, this study examines whether they are cointegrated. Engle and Granger (1987) establish that a cointegrating equation can be represented as an error correction model that incorporates both changes and levels of variables such that all of the elements are stationary. However, VARs estimated with cointegrated data will be misspecified if all of the data are differenced because long-run information will be omitted, and will have omitted stationarity inducing constraints if all the data are used in levels. Further, including variables in both levels and differences should sat-isfy stationarity requirements. However, they will omit cointegrating restrictions that may improve the model. Of course, these constraints will be satisfied asymptotically; but efficiency gains and improved multi-step forecasts may be achieved by imposing the constraints (Engle and Granger 1987, p. 259). Therefore, this study test for order of integration and compare inflation forecasting performance of different multivariate models for BRICS and OPEC countries. Research methodology – The following approaches were considered; the first approach is to construct a VAR model in differences (stationary form) to forecast inflation. The second approach is to construct a VECM without imposing cointegrating restrictions. The third approach is to construct a VEC that imposes cointegrating restrictions on the VECM. This will help to understand whether imposing cointegrating restrictions via a VEC improves long-run forecasts. Research limitation – The proposed multivariate models focused on differencing and cointegrating restrictions to ensure the stationarity of the data, the available variables were combined and specified based on their level of integration to forecast inflation. For instance, a VAR model is estimated based on differenced variables I(0); the same holds true for VECM and VEC models, where differenced variables and linear combinations of I(I) covariates are stationary. In future, multivariate models guided by economic theory rather than the order of integration of variables are suggested. Findings – The result shows that the forecast performance of inflation depends on the nature of the economy and whether the country experiencing higher inflation or low inflation. For instance, the model that includes long-run information in the form of a specified cointegrated equation generally improves the inflation forecasting performance for BRICS countries and one OPEC country (Saudi Arabia) that has a history of low inflation. Practical implications – This research will improve the policy makers decision on how to select appropriate model to forecast inflation over different economic environment. Originality/Value – These methods have not been used to forecast inflation for many emerging economies such as OPEC and BRICS countries despite the importance of many of these countries to the global economy. This study fills this gap by evaluating the forecasting performance of inflation using multivariate VAR and cointegrating models for OPEC and BRICS economies.
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CiteScore
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