Working Paper

Tackling Large Outliers in Macroeconomic Data with Vector Artificial Neural Network Autoregression

Vito Polito, Yunyi Zhang
CESifo, Munich, 2021

CESifo Working Paper No. 9395

We develop a regime switching vector autoregression where artificial neural networks drive time variation in the coefficients of the conditional mean of the endogenous variables and the variance covariance matrix of the disturbances. The model is equipped with a stability constraint to ensure non-explosive dynamics. As such, it is employable to account for nonlinearity in macroeconomic dynamics not only during typical business cycles but also in a wide range of extreme events, like deep recessions and strong expansions. The methodology is put to the test using aggregate data for the United States that include the abnormal realizations during the recent Covid-19 pandemic. The model delivers plausible and stable structural inference, and accurate out-of-sample forecasts. This performance compares favourably against a number of alternative methodologies recently proposed to deal with large outliers in macroeconomic data caused by the pandemic.

CESifo Category
Fiscal Policy, Macroeconomics and Growth
Empirical and Theoretical Methods
Keywords: nonlinear time series, regime switching models, extreme events, Covid-19, macroeconomic forecasting
JEL Classification: C450, C500, E370