数据修正和DSGE模型

A. Galvão
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引用次数: 11

摘要

DSGE模型的典型估计需要一组宏观经济总量的数据,如产出、消费和投资,这些数据可能会被修正。传统的方法采用当前可用于这些聚合的时间序列进行估计,这意味着最后的观察结果仍然受到许多轮修订的影响。本文提出了一种基于发布的方法,使用所有观测数据的修正数据来估计DSGE模型,但该模型仍然有助于实时预测。这种新方法在预测可能修正的宏观经济变量的未来值时考虑了数据的不确定性,从而为政策制定者和专业预测人员提供了回溯和预测。将这种新方法应用于中等规模的DSGE模型,提高了美国实际宏观变量密度预测的准确性,特别是预测区间的覆盖率。应用还表明,估计的经济周期源的相对重要性随数据成熟度而变化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data Revisions and DSGE Models
The typical estimation of DSGE models requires data on a set of macroeconomic aggregates, such as output, consumption and investment, which are subject to data revisions. The conventional approach employs the time series that is currently available for these aggregates for estimation, implying that the last observations are still subject to many rounds of revisions. This paper proposes a release-based approach that uses revised data of all observations to estimate DSGE models, but the model is still helpful for real-time forecasting. This new approach accounts for data uncertainty when predicting future values of macroeconomic variables subject to revisions, thus providing policy-makers and professional forecasters with both backcasts and forecasts. Application of this new approach to a medium-sized DSGE model improves the accuracy of density forecasts, particularly the coverage of predictive intervals, of US real macro variables. The application also shows that the estimated relative importance of business cycle sources varies with data maturity.
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