Bayesian modelling of VAR precision matrices using stochastic block networks

Florian Huber, Gary Koop, Massimiliano Marcellino, Tobias Scheckel

Research output: Working paper/PreprintPreprint

Abstract

Commonly used priors for Vector Autoregressions (VARs) induce shrinkage on the autoregressive coefficients. Introducing shrinkage on the error covariance matrix is sometimes done but, in the vast majority of cases, without considering the network structure of the shocks and by placing the prior on the lower Cholesky factor of the precision matrix. In this paper, we propose a prior on the VAR error precision matrix directly. Our prior, which resembles a standard spike and slab prior, models variable inclusion probabilities through a stochastic block model that clusters shocks into groups. Within groups, the probability of having relations across group members is higher (inducing less sparsity) whereas relations across groups imply a lower probability that members of each group are conditionally related. We show in simulations that our approach recovers the true network structure well. Using a US macroeconomic data set, we illustrate how our approach can be used to cluster shocks together and that this feature leads to improved density forecasts.
Original languageUndefined/Unknown
Publication statusPublished - 23 Jul 2024

Keywords

  • econ.EM

Fields of Science and Technology Classification 2012

  • 502 Economics

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