使用月度数据改进季度模型预测

Preston J. Miller, Daniel M. Chin
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引用次数: 42

摘要

本文描述了一种使用月度数据来改进季度经济模型的国家预测的新方法。这种新方法将月度模型的预测与季度模型的预测结合起来,使用最大限度地提高预测精度的权重。虽然该方法的所有步骤都不是新的,但它是第一个包含所有步骤的方法。这也是第一个被证明能以统计显著的方式改善季度模型预测的方法。这是第一个系统的预测方法,在统计上显示,预测以及主要经济预测者的流行调查发表在蓝筹经济指标通讯。该方法设计用于明尼阿波利斯联邦储备银行研究部维护的季度模型,但可以调整以适应其他模型。明尼阿波利斯联储模型是一个贝叶斯约束向量自回归模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Monthly Data to Improve Quarterly Model Forecasts
This article describes a new way to use monthly data to improve the national forecasts of quarterly economic models. This new method combines the forecasts of a monthly model with those of a quarterly model using weights that maximize forecasting accuracy. While none of the method's steps is new, it is the first method to include all of them. It is also the first method to be shown to improve quarterly model forecasts in a statistically significant way. And it is the first systematic forecasting method to be shown, statistically, to forecast as well as the popular survey of major economic forecasters published in the Blue Chip Economic Indicators newsletter. The method was designed for use with the quarterly model maintained in the Research Department of the Minneapolis Federal Reserve Bank, but can be tailored to fit other models. The Minneapolis Fed model is a Bayesian-restricted vector autoregression model.
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