Scaling Optimal Transport for High dimensional Learning
[Moved Online] Hot Topics: Optimal transport and applications to machine learning and statistics May 04, 2020 - May 08, 2020
Location: SLMath: Online/Virtual
optimal transport
Sinkhorn
machine learning
Scaling Optimal Transport For High Dimensional Learning
Optimal transport (OT) has recently gained lot of interest in machine learning. It is a natural tool to compare in a geometrically faithful way probability distributions. It finds applications in both supervised learning (using geometric loss functions) and unsupervised learning (to perform generative model fitting). OT is however plagued by the curse of dimensionality, since it might require a number of samples which grows exponentially with the dimension. In this talk, I will review entropic regularization methods which define geometric loss functions approximating OT with a better sample complexity. More information and references can be found on the website of our book "Computational Optimal Transport" https://optimaltransport.github.io/
Scaling Optimal Transport For High Dimensional Learning
H.264 Video | 928_28383_8314_Scaling_Optimal_Transport_for_High_DImensional_Learning.mp4 |
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