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IDEAS/STAT Optimization Seminar: “Foundations of Deep Learning: Optimization and Representation Learning”
February 13 at 12:00 PM - 1:15 PM
Deep learning’s success stems from the ability of neural networks to automatically discover meaningful representations from raw data. In this talk, I will describe some recent insights into how optimization enables this learning process. First, I will show how optimization algorithms exhibit surprisingly rich dynamics when training neural networks, and how these complex dynamics are actually crucial to their success – enabling them to find solutions that generalize well, navigate challenging loss landscapes, and efficiently adapt to local curvature. I will then explore how optimization enables neural networks to adapt to low-dimensional structure in the data, how the geometry of the loss landscape shapes the difficulty of feature learning, and how these ideas extend to in-context learning in transformers.
Zoom link: https://upenn.zoom.us/j/93151261686 (Meeting ID: 931 5126 1686)