变化世界中的实时通胀预测

Real-Time Inflation Forecasting in a Changing World

Journal of Business & Economic Statistics · 2012
被引 193
人大 AABS 4

中文导读

使用贝叶斯模型平均方法,结合多种预测变量和结构变化机制,对美国PCE和GDP平减指数进行实时通胀预测,发现允许误差方差存在结构断裂的模型在1984年后预测精度很高。

Abstract

This article revisits the accuracy of inflation forecasting using activity and expectations variables. We apply Bayesian model averaging across different regression specifications selected from a set of potential predictors that includes lagged values of inflation, a host of real activity data, term structure data, (relative) price data, and surveys. In this model average, we can entertain different channels of structural instability, by either incorporating stochastic breaks in the regression parameters of each individual specification within this average, or allowing for breaks in the error variance of the overall model average, or both. Thus, our framework simultaneously addresses structural change and model uncertainty that would unavoidably affect any inflation forecast model. The different versions of our framework are used to model U.S. personal consumption expenditures (PCE) deflator and gross domestic product (GDP) deflator inflation rates for the 1960-2011 period. A real-time inflation forecast evaluation shows that averaging over many predictors in a model that at least allows for structural breaks in the error variance results in very accurate point and density forecasts, especially for the post-1984 period. Our framework is especially useful when forecasting, in real-time, the likelihood of lower-than-usual inflation rates over the medium term. This article has online supplementary materials.

实时通胀预测贝叶斯模型平均结构突变预测变量选择