University of Wollongong
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Neural Bayes estimators for censored inference with peaks-over-threshold models

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posted on 2025-02-17, 04:15 authored by Jordan Richards, Matthew Sainsbury-Dale, Andrew Zammit Mangion, Raphael Huser
Making inference with spatial extremal dependence models can be computationally burdensome since they involve intractable and/or censored likelihoods. Building on recent advances in likelihood-free inference with neural Bayes estimators, that is, neural networks that approximate Bayes estimators, we develop highly efficient estimators for censored peaks-over-threshold models that use augmented data to encode censoring information in the neural network input. Our new method provides a paradigm shift that challenges traditional censored likelihood-based inference methods for spatial extremal dependence models. Our simulation studies highlight significant gains in both computational and statistical efficiency, relative to competing likelihood-based approaches, when applying our novel estimators to make inference with popular extremal dependence models, such as max-stable, r-Pareto, and random scale mixture process models. We also illustrate that it is possible to train a single neural Bayes estimator for a general censoring level, precluding the need to retrain the network when the censoring level is changed. We illustrate the efficacy of our estimators by making fast inference on hundreds-of-thousands of high-dimensional spatial extremal dependence models to assess extreme particulate matter 2.5 microns or less in diameter concentration over the whole of Saudi Arabia.

History

Journal title

Journal of Machine Learning Research

Volume

25

Issue

390

Pagination

1-49

Publisher

MIT Press

Publication status

  • Published

Language

English

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