Nowcasting Business Cycles: A Bayesian Approach to Dynamic Heterogeneous Factor Models

Antonello D’Agostino, D. Giannone, M. Lenza, M. Modugno
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引用次数: 20

Abstract

We develop a framework for measuring and monitoring business cycles in real time. Following a long tradition in macroeconometrics, inference is based on a variety of indicators of economic activity, treated as imperfect measures of an underlying index of business cycle conditions. We extend existing approaches by permitting for heterogenous lead–lag patterns of the various indicators along the business cycles. The framework is well suited for high-frequency monitoring of current economic conditions in real time – nowcasting – since inference can be conducted in the presence of mixed frequency data and irregular patterns of data availability. Our assessment of the underlying index of business cycle conditions is accurate and more timely than popular alternatives, including the Chicago Fed National Activity Index (CFNAI). A formal real-time forecasting evaluation shows that the framework produces well-calibrated probability nowcasts that resemble the consensus assessment of the Survey of Professional Forecasters.
临近预测商业周期:动态异质因素模型的贝叶斯方法
我们开发了一个用于实时测量和监控业务周期的框架。遵循宏观计量经济学的悠久传统,推断是基于经济活动的各种指标,被视为商业周期条件的潜在指数的不完美测量。我们扩展了现有的方法,允许沿商业周期的各种指标的异质领先-滞后模式。该框架非常适合于对当前经济状况的实时高频监测——临近预报——因为可以在存在混合频率数据和不规则数据可用模式的情况下进行推断。我们对商业周期条件的基本指数的评估比流行的替代指标(包括芝加哥联储全国活动指数(CFNAI))更准确、更及时。正式的实时预测评估表明,该框架产生了校准良好的概率临近预测,类似于专业预报员调查的共识评估。
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