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EPFL
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Schedule
Wednesday, February 8, 2023
12:00 AM America/New_York
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Format
Recorded Seminar
Recording
Available
Host
van Vreeswijk TNS
Duration
70.00 minutes
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The affinity between statistical physics and machine learning has a long history. I will describe the main lines of this long-lasting friendship in the context of current theoretical challenges and open questions about deep learning. Theoretical physics often proceeds in terms of solvable synthetic models, I will describe the related line of work on solvable models of simple feed-forward neural networks. I will highlight a path forward to capture the subtle interplay between the structure of the data, the architecture of the network, and the optimization algorithms commonly used for learning.
Lenka Zdeborová
EPFL
neuro
Decades of research on understanding the mechanisms of attentional selection have focused on identifying the units (representations) on which attention operates in order to guide prioritized sensory p
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neuro