Wasserstein Gradient Flows and Applications to Sampling in Machine Learning - Lecture 1
Offered By: Centre International de Rencontres Mathématiques via YouTube
Course Description
Overview
Explore the fundamental concepts of Wasserstein gradient flows and their applications to sampling in machine learning in this comprehensive lecture by Anna Korba. Delve into the intricate mathematical theories presented during the thematic meeting "Frontiers in interacting particle systems, aggregation-diffusion equations & collective behavior" at the Centre International de Rencontres Mathématiques in Marseille, France. Gain insights into the intersection of probability theory, optimization, and machine learning as Korba elucidates the connections between Wasserstein geometry and sampling algorithms. Access this enriched video content through CIRM's Audiovisual Mathematics Library, featuring chapter markers, keywords, abstracts, bibliographies, and Mathematics Subject Classification for enhanced navigation and understanding. Utilize the multi-criteria search function to explore related talks by worldwide mathematicians and broaden your knowledge in this cutting-edge field of mathematical research.
Syllabus
Anna Korba: Wasserstein gradient flows and applications to sampling in machine learning - Lecture 1
Taught by
Centre International de Rencontres Mathématiques
Related Courses
Introduction to Statistics: ProbabilityUniversity of California, Berkeley via edX Aléatoire : une introduction aux probabilités - Partie 1
École Polytechnique via Coursera Einführung in die Wahrscheinlichkeitstheorie
Johannes Gutenberg University Mainz via iversity Combinatorics and Probability
Moscow Institute of Physics and Technology via Coursera Probability
University of Pennsylvania via Coursera