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CMX Lunch Seminar

Tuesday, February 25, 2025
12:00pm to 1:00pm
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Annenberg 213
Mean field limits for Consensus-Based Optimization and Sampling
Urbain Vaes, Researcher (Inria Starting Faculty Position) /Lecturer in Mathematics, Department of Mathematics, Inria Paris / NYU Paris,

For algorithms based on interacting particle systems that admit a mean-field description, convergence analysis is often more accessible at the mean-field level. In order to translate convergence results obtained at the mean-field level to the finite ensemble setting, it is desirable to obtain estimates on the distance, in an appropriate metric, between the particle dynamics and the corresponding mean-field dynamics. In this talk, we present quantitative mean-field limit results for two related interacting particle systems: Consensus-Based Optimization and Consensus-Based Sampling. Our approach extends Sznitman's classical

argument: in order to circumvent issues related to the lack of global Lipschitz continuity of the coefficients, we discard an event of small probability, the contribution of which is controlled using moment estimates for the particle systems.

For more information, please contact Jolene Brink by phone at (626)395-2813 or by email at [email protected] or visit CMX Website.