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Optimal Transport

EC8
LocationUtrecht University
Weeks6 - 21
LectureTuesday, 14:00 - 16:45
Provider Analysis and Dynamical Systems (NDNS+)
LinksCourse page (requires login)

Summary

Prerequisites
Linear algebra (any course of linear algebra)
Real Analysis (any course with multi-variable analysis)
Functional analysis (Banach and Hilbert spaces, dual spaces, and convergence in these spaces)
Probability theory or measure theory (rigorous definition of measures, Lebesgue integration, and Lp spaces)

Aim of the course
Optimal Transport (OT) is a classical mathematical theory that was introduced in the 18th century to study the optimal allocations of resources and has since had an impact on areas within and beyond Mathematics, including the theory of Partial Differential Equations, Geometric Analysis, Dynamical Systems, Fluid Mechanics, Physical and Engineering Sciences. In recent years, OT has found extensive applications in a wider range of subjects such as Data Science, Statistics, and Theoretical Chemistry, bringing with it a need to further develop both theoretical and computational aspects of Optimal Transport.

The course aims to (1) rigorously introduce the theory of Optimal Transport leaning on classical tools from functional analysis and probability theory and (2) demonstrate its utility by presenting the most relevant applications to machine learning, urban planning, and image processing.

The course aims to

By the end of the course, the student should be able to

Lecturers