From Classical Statistics to Modern ML: the Lessons of Deep Learning - Mikhail Belkin
Workshop on Theory of Deep Learning: Where next?
Topic: From Classical Statistics to Modern ML: the Lessons of Deep Learning
Speaker: Mikhail Belkin
Affiliation: Ohio State University
Date: October 16, 2019
For more video please visit http://video.ias.edu
Видео From Classical Statistics to Modern ML: the Lessons of Deep Learning - Mikhail Belkin канала Institute for Advanced Study
Topic: From Classical Statistics to Modern ML: the Lessons of Deep Learning
Speaker: Mikhail Belkin
Affiliation: Ohio State University
Date: October 16, 2019
For more video please visit http://video.ias.edu
Видео From Classical Statistics to Modern ML: the Lessons of Deep Learning - Mikhail Belkin канала Institute for Advanced Study
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17 октября 2019 г. 0:45:57
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