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Dr
CNRS & CEA Saclay
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Schedule
Wednesday, June 24, 2020
2:00 PM Europe/London
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Format
Recorded Seminar
Recording
Available
Host
The Neurotheory Forum
Duration
70.00 minutes
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The affinity between statistical physics and machine learning has long history, this is reflected even in the machine learning terminology that is in part adopted from physics. 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 learning algorithm.
Lenka Zdeborová
Dr
CNRS & CEA Saclay
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
neuro
neuro