Introduction to Uncertainty Quantification Using Martingales For Misspecified Gaussian Processes

Let's dive into the details surrounding Uncertainty Quantification Using Martingales For Misspecified Gaussian Processes. The 32nd International Conference on Algorithmic Learning Theory (ALT 2021) Title:

Uncertainty Quantification Using Martingales For Misspecified Gaussian Processes Comprehensive Overview

Gaussian process If we're working Recorded 02 May 2023. Marcus Noack of Lawrence Berkeley Laboratory presents "Advanced

The talk by Masha Naslidnyk at the Probabilistic Numerics Spring School 2023 in Tübingen. Recorded on 29 March 2023.

Summary & Highlights for Uncertainty Quantification Using Martingales For Misspecified Gaussian Processes

  • Pau is a PhD student in Computing and Mathematical Sciences at Caltech, advised by Houman Owhadi. His main research area ...
  • "Batch simulations and
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  • The machine learning consultancy: https://truetheta.io Join my email list to get educational and useful articles (and nothing else!)
  • Toni Karvonen: Gaussian Processes and Uncertainty Quantification

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