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Caltech

H.B. Keller Colloquium

Monday, April 8, 2024
4:00pm to 5:00pm
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Annenberg 105
Worst-Case Learning from Inaccurate Data and under Multifidelity Models
Simon Foucart, Professor, Department of Mathematics, Texas A&M University,

This talk showcases the speaker's recent results in the field of Optimal Recovery, viewed as a trustworthy Learning Theory focusing on the worst case. At the core of several results presented here is a scenario, resolved in the global and the local settings, where the model set is the intersection of two hyperellipsoids. This has implications in optimal recovery from deterministically inaccurate data and in optimal recovery under a multifidelity-inspired model. In both situations, the theory becomes richer when considering the optimal estimation of linear functionals. This particular case also comes with additional results in the presence of randomly inaccurate data.

For more information, please contact Sumaia Abedin by phone at 6263956704 or by email at [email protected] or visit https://www.cms.caltech.edu/news-events/keller-colloquium.