Coarsened Bayesian VARs -- Correcting BVARs for Incorrect Specification

Florian Huber, Massimiliano Marcellino

Research output: Working paper/PreprintPreprint

Abstract

Model mis-specification in multivariate econometric models can strongly influence quantities of interest such as structural parameters, forecast distributions or responses to structural shocks, even more so if higher-order forecasts or responses are considered, due to parameter convolution. We propose a simple method for addressing these specification issues in the context of Bayesian VARs. Our method, called coarsened Bayesian VARs (cBVARs), replaces the exact likelihood with a coarsened likelihood that takes into account that the model might be mis-specified along important but unknown dimensions. Coupled with a conjugate prior, this results in a computationally simple model. As opposed to more flexible specifications, our approach avoids overfitting, is simple to implement and estimation is fast. The resulting cBVAR performs well in simulations for several types of mis-specification. Applied to US data, cBVARs improve point and density forecasts compared to standard BVARs, and lead to milder but more persistent negative effects of uncertainty shocks on output.
Original languageUndefined/Unknown
Publication statusPublished - 16 Apr 2023

Keywords

  • econ.EM

Fields of Science and Technology Classification 2012

  • 502 Economics

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