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EXTRACTING A ROBUST US BUSINESS CYCLE USING A TIME-VARYING MULTIVARIATE MODEL-BASED BANDPASS FILTER

机译:使用基于时变多元模型的带通滤波器提取强大的美国业务周期

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摘要

We develop a flexible business cycle indicator that accounts for potential time variation in macroeconomic variables. The coincident economic indicator is based on a multivariate trend cycle decomposition model and is constructed from a moderate set of US macroeconomic time series. In particular, we consider an unobserved components time series model with a common cycle that is shared across different time series but adjusted for phase shift and amplitude. The extracted cycle can be interpreted as a model-based bandpass filter and is designed to emphasize the business cycle frequencies that are of interest to applied researchers and policymakers. Stochastic volatility processes and mixture distributions for the irregular components and the common cycle disturbances enable us to account for the heteroskedasticity present in the data. Forecasting results are presented for a set of different specifications. Point forecasts from the preferred model indicate a future recession with the uncertainty over the business cycle growing quickly as the forecast horizon increases.
机译:我们开发了一个灵活的业务周期指标,该指标可说明宏观经济变量中潜在的时间变化。同步经济指标基于多变量趋势周期分解模型,并由适度的美国宏观经济时间序列构成。特别是,我们考虑具有共同周期的不可观察组件时间序列模型,该模型在不同时间序列之间共享,但针对相移和幅度进行了调整。提取的周期可以解释为基于模型的带通滤波器,旨在强调应用研究人员和政策制定者感兴趣的商业周期频率。随机波动过程和不规则成分的混合物分布以及常见的周期扰动使我们能够解释数据中存在的异方差。给出了一组不同规格的预测结果。首选模型的点预测表明未来的衰退,随着预测范围的增加,商业周期中的不确定性会迅速增加。

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  • 来源
    《Journal of applied econometrics》 |2010年第4期|p.695-719|共25页
  • 作者单位

    University of Chicago Booth School of Business, 5807 S. Woodlawn Ave., Chicago, IL 60637, USA;

    Department of Econometrics, Vrije Universiteit, Amsterdam, The Netherlands;

    Department of Economics, University of Washington, Seattle, WA, USA;

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  • 正文语种 eng
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