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Variational Bayes in State Space Models: Inferential and Predictive Accuracy

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journal contribution
posted on 2022-11-10, 05:49 authored by David T. Frazier, Gael M. Martin, Ruben Loaiza-Maya
Using theoretical and numerical results, we document the accuracy of commonly applied variational Bayes methods across a range of state space models. The results demonstrate that, in terms of accuracy on fixed parameters, there is a clear hierarchy in terms of the methods, with approaches that do not approximate the states yielding superior accuracy over methods that do. We also document numerically that the inferential discrepancies between the various methods often yield only small discrepancies in predictive accuracy over small out-of-sample evaluation periods. Nevertheless, in certain settings, these predictive discrepancies can become meaningful over a longer out-of-sample period. This finding indicates that the invariance of predictive results to inferential inaccuracy, which has been an oft-touted point made by practitioners seeking to justify the use of variational inference, is not ubiquitous and must be assessed on a case-by-case basis.

History

Classification-JEL

--

Creation date

2022-02-24

Working Paper Series Number

1/22

Length

53 pp

File-Format

application/pdf

Handle

RePEc:msh:ebswps:2022-1

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