Forecasting US Recessions with a Large Set of Predictors

Forecasting US Recessions with a Large Set of Predictors

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Article ID: iaor20163038
Volume: 35
Issue: 6
Start Page Number: 477
End Page Number: 492
Publication Date: Sep 2016
Journal: Journal of Forecasting
Authors:
Keywords: forecasting: applications, financial
Abstract:

In this paper, I use a large set of macroeconomic and financial predictors to forecast US recession periods. I adopt Bayesian methodology with shrinkage in the parameters of the probit model for the binary time series tracking the state of the economy. The in‐sample and out‐of‐sample results show that utilizing a large cross‐section of indicators yields superior US recession forecasts in comparison to a number of parsimonious benchmark models. Moreover, the data‐rich probit model gives similar accuracy to the factor‐based model for the 1‐month‐ahead forecasts, while it provides superior performance for 1‐year‐ahead predictions. Finally, in a pseudo‐real‐time application for the Great Recession, I find that the large probit model with shrinkage is able to pick up the recession signals in a timely fashion and does well in comparison to the more parsimonious specification and to nonparametric alternatives.

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