Manifold learning via sparse optimal transport

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Event details

Date 14.12.2023
Hour 10:0011:00
Speaker Gilles Mordant – University of Göttingen
Location Online
Category Conferences - Seminars
Event Language English

Presentation in Mathematics

In this talk, we discuss a method for manifold learning that relies on a symmetric version of the optimal transport problem with a quadratic regularisation. 
We show that the solution of such a problem yields a sparse and adaptive affinity matrix that can be interpreted as a generalisation of the bistochastic kernel normalisation. 
We prove that the resulting kernel is consistent with a Laplace-type operator in the continuous limit, discuss geometric interpretations and establish robustness to heteroskedastic noise.
The performance on certain simulated and real data examples will be shown. Some open questions will be raised across the talk. 
 

Practical information

  • Informed public
  • Free
  • This event is internal

Organizer

  • Institute of Mathematics

Contact

  • Prof. Anthony Davison

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