Bayesian nonparametric methods for macroeconomic forecasting

42 Pages Posted: 7 Jun 2024

See all articles by Massimiliano Giuseppe Marcellino

Massimiliano Giuseppe Marcellino

Bocconi University - Department of Economics; Centre for Economic Policy Research (CEPR)

Michael Pfarrhofer

Vienna University of Economics and Business - Department of Economics

Date Written: June 07, 2024

Abstract

We review specification and estimation of multivariate Bayesian nonparametric models for forecasting (possibly large sets of) macroeconomic and financial variables. The focus is on Bayesian Additive Regression Trees and Gaussian Processes. We then apply various versions of these models for point, density and tail forecasting using datasets for the euro area and the US. The performance is compared with that of several variants of Bayesian VARs to assess the relevance of accounting for general forms of nonlinearities. We find that medium-scale linear VARs with stochastic volatility are tough benchmarks to beat. Some gains in predictive accuracy arise for nonparametric approaches, most notably for short-run forecasts of unemployment and longer-run predictions of inflation, and during recessionary or otherwise non-standard economic episodes.

Keywords: C53 United States, euro area, Bayesian Additive Regression Trees, Gaussian Processes, multivariate time series analysis, structural breaks

Suggested Citation

Marcellino, Massimiliano and Pfarrhofer, Michael, Bayesian nonparametric methods for macroeconomic forecasting (June 07, 2024). BAFFI CAREFIN Centre Research Paper, Working Paper No. 224, Available at SSRN: https://ssrn.com/abstract=4857173 or http://dx.doi.org/10.2139/ssrn.4857173

Massimiliano Marcellino (Contact Author)

Bocconi University - Department of Economics ( email )

Via Gobbi 5
Milan, 20136
Italy

Centre for Economic Policy Research (CEPR) ( email )

London
United Kingdom

Michael Pfarrhofer

Vienna University of Economics and Business - Department of Economics ( email )

Welthandelsplatz 1
A-1020 Wien
Austria

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