危机时期的宏观经济预测

Pablo A. Guerrón-Quintana, M. Zhong
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引用次数: 9

摘要

我们提出了一种简化的半参数方法,用于宏观经济在突发事件中的预测。基于聚类和相似性的概念,我们将时间序列划分为块,搜索与最近的观测块最接近的块,并使用匹配的块进行预测。一种可能性是比较不同块间的局部均值,这抓住了匹配一系列方向运动的思想。我们表明,我们的方法在大衰退期间以及通货膨胀、失业率和实际个人收入等变量中表现得特别好。在补充了房价信息后,我们的方法在1990年至2015年期间始终优于参数线性、非线性、单变量和多变量替代方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Macroeconomic Forecasting in Times of Crises
We propose a parsimonious semiparametric method for macroeconomic forecasting during episodes of sudden changes. Based on the notion of clustering and similarity, we partition the time series into blocks, search for the closest blocks to the most recent block of observations, and with the matched blocks we proceed to forecast. One possibility is to compare local means across blocks, which captures the idea of matching directional movements of a series. We show that our approach does particularly well during the Great Recession and for variables such as inflation, unemployment, and real personal income. When supplemented with information from housing prices, our method consistently outperforms parametric linear, nonlinear, univariate, and multivariate alternatives for the period 1990 - 2015.
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