在数据丰富的环境下预测GDP及其组成部分:间接方法的优点

A. Giovannelli, Ambra Citton, Cristian Tegami, Tommaso Proietti, O. Ricchi, Cristina Tinti
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引用次数: 7

摘要

国民经济核算提供了对当前经济状况的连贯和详尽的描述,但每季度提供一次,并且发布时有不可忽视的出版滞后。本文提出并说明了一种方法,利用一套高维的月度经济指标,跨越共同宏观经济和金融因素的空间,按产出和支出类型按月预测国内生产总值(GDP)的16个主要组成部分。对共同空间的预测是通过结合个人的临近预测和所有可能的二元模型的预测来进行的,这些模型是由未观察到的月度国内生产总值组成部分和观察到的月度指标组成的。讨论了几种池化策略,并通过伪实时预测实验选择了预测性能最好的池化策略。每月GDP可以通过不同行业的增加值和支出组成部分的同期总和来间接估计。这样就可以对间接的临近预测和预测与直接方法和增长核算进行比较评估。我们的方法满足了维度带来的挑战,因为它可以处理大量的时间序列,其复杂性随着横截面维度线性增加,同时保留了宏观经济信息的本质异质性。对意大利情况的应用导致了几个有趣的发现,涉及每月指标所载信息的时变预测内容。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Nowcasting GDP and its Components in a Data-Rich Environment: The Merits of the Indirect Approach
The national accounts provide a coherent and exaustive description of the current state of the economy, but are available at the quarterly frequency and are released with a nonignorable publication lag. The paper proposes and illustrates a method for nowcasting and forecasting the sixteen main components of Gross Domestic Product (GDP) by output and expenditure type at the monthly frequency, using a high-dimensional set of monthly economic indicators spanning the space of the common macroeconomic and financial factors. The projection on the common space is carried out by combining the individual nowcasts and forecasts arising from all possible bivariate models of the unobserved monthly GDP component and the observed monthly indicator. We discuss several pooling strategies and we select the one showing the best predictive performance according to a pseudo real time forecasting experiment. Monthly GDP can be indirectly estimated by the contemporaneous aggregation of the value added of the different industries and of the expenditure components. This enables the comparative assessment of the indirect nowcasts and forecasts vis-a-vis the direct approach and a growth accounting exercise. Our approach meets the challenges posed by the dimensionality, since it can handle a large number of time series with a complexity that increases linearly with the cross-sectional dimension, while retaining the essential heterogeneity of the information about the macroeconomy. The application to the Italian case leads to several interesting discoveries concerning the time-varying predictive content of the information carried by the monthly indicators.
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