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Posterior exploration for computationally intensive forward models
Preprint   Open access

Posterior exploration for computationally intensive forward models

Mikkel B Lykkegaard, Colin Fox, Dave Higdon, C. Shane Reese and J. David Moulton
arXiv.org
Cornell University
01/05/2024
Handle:
https://hdl.handle.net/10523/40776

Abstract

Statistics - Computation
In this chapter, we address the challenge of exploring the posterior distributions of Bayesian inverse problems with computationally intensive forward models. We consider various multivariate proposal distributions, and compare them with single-site Metropolis updates. We show how fast, approximate models can be leveraged to improve the MCMC sampling efficiency.
pdf
2405.00397v16.75 MBDownloadView
Preprint (Author's original)v1CC BY V4.0 Open Access
url
https://doi.org/10.48550/arxiv.2405.00397View
Preprint (Author's original)CC BY V4.0 Open

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