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Published March 2018 | Submitted
Journal Article Open

Posterior consistency for Gaussian process approximations of Bayesian posterior distributions

Abstract

We study the use of Gaussian process emulators to approximate the parameter-to-observation map or the negative log-likelihood in Bayesian inverse problems. We prove error bounds on the Hellinger distance between the true posterior distribution and various approximations based on the Gaussian process emulator. Our analysis includes approximations based on the mean of the predictive process, as well as approximations based on the full Gaussian process emulator. Our results show that the Hellinger distance between the true posterior and its approximations can be bounded by moments of the error in the emulator. Numerical results confirm our theoretical findings.

Additional Information

© 2017 American Mathematical Society. Received by the editor March 7, 2016 and, in revised form, September 26, 2016. Article electronically published on August 3, 2017.

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