Fast and flexible Bayesian inference in time-varying parameter regression models

Niko Hauzenberger, Florian Huber, Gary Koop, Luca Onorante

Research output: Contribution to journalArticlepeer-review

11 Citations (Scopus)
76 Downloads (Pure)

Abstract

In this article, we write the time-varying parameter (TVP) regression model involving K explanatory variables and T observations as a constant coefficient regression model with KT explanatory variables. In contrast with much of the existing literature which assumes coefficients to evolve according to a random walk, a hierarchical mixture model on the TVPs is introduced. The resulting model closely mimics a random coefficients specification which groups the TVPs into several regimes. These flexible mixtures allow for TVPs that feature a small, moderate or large number of structural breaks. We develop computationally efficient Bayesian econometric methods based on the singular value decomposition of the KT regressors. In artificial data, we find our methods to be accurate and much faster than standard approaches in terms of computation time. In an empirical exercise involving inflation forecasting using a large number of predictors, we find our models to forecast better than alternative approaches and document different patterns of parameter change than are found with approaches which assume random walk evolution of parameters.

Original languageEnglish
Pages (from-to)1904-1918
Number of pages15
JournalJournal of Business and Economic Statistics
Volume40
Issue number4
Early online date30 Nov 2021
DOIs
Publication statusPublished - 2 Oct 2022

Keywords

  • time-varying parameter regression
  • singular value decomposition
  • clustering
  • hierarchical priors

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