Introduction to Uncertainty Quantification Using Martingales For Misspecified Gaussian Processes

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Uncertainty Quantification Using Martingales For Misspecified Gaussian Processes Comprehensive Overview

Gaussian process Pau is a PhD student in Computing and Mathematical Sciences at Caltech, advised by Houman Owhadi. His main research area ... Recorded 02 May 2023. Marcus Noack of Lawrence Berkeley Laboratory presents "Advanced

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  • Toni Karvonen: Gaussian Processes and Uncertainty Quantification

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