Optimal Transport and Machine Learning with Marco Cuturi
EPISODE 131
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APRIL
26,
2018
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About this Episode
In this episode, i'm joined by Marco Cuturi, professor of statistics at Universit� Paris-Saclay.
Marco and I spent some time discussing his work on Optimal Transport Theory at NIPS last year. In our discussion, Marco explains Optimal Transport, which provides a way for us to compare probability measures. We look at ways Optimal Transport can be used across machine learning applications, including graphical, NLP, and image examples. We also touch on GANs, or generative adversarial networks, and some of the challenges they present to the research community.
About the Guest
Marco Cuturi
Université Paris-Saclay
Resources
- CREST - Center for Research in Economics and Statistics
- ENSAE Paris
- Universit� Paris-Saclay
- Optimal Transport
- Optimal Transport Project Github
- Optimal Transport & Machine Learning
- ‘Antifragile,' by Nassim Nicholas Taleb
- Kullback-Leibler Divergence
- Cross Entropy
- Word Movers Distance
- Wasserstein GAN
- Check out @ShirinGlander's Great TWIML Sketches!
- TWIML Presents: Series page