Monash University
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Loss-Based Variational Bayes Prediction

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journal contribution
posted on 2022-11-10, 03:43 authored by David T. Frazier, Ruben Loaiza-Maya, Gael M. Martin, Bonsoo Koo
We propose a new method for Bayesian prediction that caters for models with a large number of parameters and is robust to model misspecification. Given a class of high-dimensional (but parametric) predictive models, this new approach constructs a posterior predictive using a variational approximation to a loss-based, or Gibbs, posterior that is directly focused on predictive accuracy. The theoretical behavior of the new prediction approach is analyzed and a form of optimality demonstrated. Applications to both simulated and empirical data using high-dimensional Bayesian neural network and autoregressive mixture models demonstrate that the approach provides more accurate results than various alternatives, including misspecified likelihood-based predictions.

History

Classification-JEL

C11, C53, C58

Creation date

2021-05-21

Working Paper Series Number

8/21

Length

44 pp

File-Format

application/pdf

Handle

RePEc:msh:ebswps:2021-8