Projects per year
Abstract
We propose a new approach to 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 generalized 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. Supplementary materials for this article are available online.
Original language | English |
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Number of pages | 31 |
Journal | Journal of Computational and Graphical Statistics |
DOIs | |
Publication status | Accepted/In press - 2024 |
Keywords
- Bayesian neural networks
- Generalized (Gibbs) posteriors
- Loss-based Bayesian forecasting
- M4 forecasting competition
- Proper scoring rules
- Variational inference
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Variational Inference for Intractable and Misspecified State Space Models
1/01/23 → 31/12/25
Project: Research
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Loss-based Bayesian Prediction
Maneesoonthorn, O., Martin, G., Frazier, D. & Hyndman, R.
19/06/20 → 18/06/25
Project: Research
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Consequences of Model Misspecification in Approximate Bayesian Computation
Australian Research Council (ARC)
1/02/20 → 31/12/24
Project: Research