Applying Bayesian methods for macroeconomic modeling of business cycle phases

IF 0.3 Q4 ECONOMICS
Maria Guseva, A. Silaev
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引用次数: 0

Abstract

In the present research, the features of applying two models for estimating macroeconomic dynamic in the USA are investigated: Bayesian vector autoregression and Bayesian vector autoregression with Markov switching. The research goal is to identify periods, structure of fluctuations and the main directions of interaction of the variables (real US GDP and employment) using Bayesian vector autoregression models. Models with Markov chains include many equations (structures). The switching mechanisms between these structures are controlled by an unobservable variable that follows a first-order Markov process. The analyzed variables were taken from the first quarter of 1953 to the third quarter of 2015. The model parameters were estimated on the basis of a prior for the multivariate normal distribution — the inverse Wishart distribution (a generalization of the Minnesota a priori distribution). Basing on the results of the estimation of the two-dimensional model with Markov Switching the average GDP growth rate and expected duration of phases was calculated. The estimated model is acceptable for describing the US economy and with high accuracy describes the probability of being in a particular phase in different periods of time. On the basis of medium-term forecasts, root mean squared errors of the forecast are calculated and a conclusion is made about the most appropriate model. Within the framework of this paper, impulse response functions are built allowing to evaluate how variables in the model react on fluctuations, shocks.
应用贝叶斯方法对经济周期阶段进行宏观经济建模
本文研究了贝叶斯向量自回归模型和马尔可夫切换贝叶斯向量自回归模型在美国应用于宏观经济动态估计的特点。研究目标是使用贝叶斯向量自回归模型确定变量(美国实际GDP和就业)的周期、波动结构和相互作用的主要方向。马尔可夫链模型包括许多方程(结构)。这些结构之间的切换机制由一个不可观察的变量控制,该变量遵循一阶马尔可夫过程。所分析的变量取自1953年第一季度至2015年第三季度。模型参数是根据多元正态分布的先验估计的,即逆Wishart分布(明尼苏达先验分布的一种推广)。基于二维马尔可夫切换模型的估计结果,计算了平均GDP增长率和预期阶段持续时间。估计模型对于描述美国经济是可以接受的,并且具有很高的准确性,描述了在不同时期处于特定阶段的概率。在中期预测的基础上,计算预测的均方根误差,得出最合适的模型。在本文的框架内,建立了脉冲响应函数,允许评估模型中的变量对波动,冲击的反应。
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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来源期刊
CiteScore
1.30
自引率
20.00%
发文量
9
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