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Episode 32: Jamie Simon, UC Berkeley: On theoretical principles for how neural networks learn and generalize

Generally Intelligent

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The Importance of Learning Complex Functions

Not every clear provable difference between two architecture classes Will matter when it comes to you know proof training of performance with real data. Real data has some Regularities and those regularities make it so that you don't end up having to learn Yeah, never I get it. You need like many many more parameters Maybe exponentially more parameters to get with only one hidden layer The filter true But of course like real data isn't these special functions that are designed to be hard to get in a single layer So this is a lesson that can be taken from this That not every clear Provable Difference Between Two Architecture Classes Will Matter When It Comes To Proof Training Of Performance With Real Data.

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