SKM 2023 – scientific programme
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DY: Fachverband Dynamik und Statistische Physik
DY 11: Focus Session: Physics Meets ML II – Understanding Machine Learning as Complex Interacting Systems (joint session DY/TT)
DY 11.6: Invited Talk
Monday, March 27, 2023, 17:30–18:00, ZEU 250
Deep Learning Theory Beyond the Kernel Limit — •Cengiz Pehlevan — Harvard University, USA
Deep learning has emerged as a successful paradigm for solving challenging machine learning and computational problems across a variety of domains. However, theoretical understanding of the training and generalization of modern deep learning methods lags behind current practice. I will give an overview of our recent results in this domain, including a new theory that we derived by applying dynamical field theory to deep learning dynamics. This theory gives insight into internal representations learned by the network under different learning rules.