Forecasting with Shadow-Rate VARs

Andrea Carriero, Todd E. Clark, Massimiliano Marcellino, Elmar Mertens
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引用次数: 5

Abstract

Interest rate data are an important element of macroeconomic forecasting. Projections of future interest rates are not only an important product themselves, but also typically matter for forecasting other macroeconomic and financial variables. A popular class of forecasting models is linear vector autoregressions (VARs) that include shorter- and longer-term interest rates. However, in a number of economies, at least shorter-term interest rates have now been stuck for years at or near their effective lower bound (ELB), with longer-term rates drifting toward the constraint as well. In such an environment, linear forecasting models that ignore the ELB constraint on nominal interest rates appear inept. To handle the ELB on interest rates, we model observed rates as censored observations of a latent shadow-rate process in an otherwise standard VAR setup. The shadow rates are assumed to be equal to observed rates when above the ELB. Point and density forecasts for interest rates (short term and long term) constructed from a shadow-rate VAR for the US since 2009 are superior to predictions from a standard VAR that ignores the ELB. For other indicators of financial conditions and measures of economic activity and inflation, the accuracy of forecasts from our shadow-rate specification is on par with a standard VAR that ignores the ELB.
用阴影率var预测
利率数据是宏观经济预测的重要组成部分。对未来利率的预测不仅本身是一项重要的产品,而且对于预测其他宏观经济和金融变量通常也很重要。一类流行的预测模型是线性向量自回归(var),它包括短期和长期利率。然而,在许多经济体中,至少短期利率多年来一直处于或接近其有效下限(ELB),长期利率也在向这一下限漂移。在这样的环境下,忽略ELB对名义利率约束的线性预测模型显得无能为力。为了处理关于利率的ELB,我们将观察到的利率建模为标准VAR设置中潜在影子利率过程的删减观测值。假设在ELB之上的阴影率等于观测率。2009年以来,根据影子利率VAR构建的美国利率(短期和长期)的点和密度预测优于忽略ELB的标准VAR预测。对于金融状况的其他指标以及经济活动和通胀的衡量指标,我们的影子利率规范预测的准确性与忽略ELB的标准VAR相当。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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