4min chapter

Machine Learning Street Talk (MLST) cover image

#60 Geometric Deep Learning Blueprint (Special Edition)

Machine Learning Street Talk (MLST)

CHAPTER

The Universal Approximation Theorem

A universal approximation theorem refers to this very general principle that once you're define a varometric class, let's say you're not learned functions using nonets. It just describes your dability that as you put more and more permites into your class, you are unable to to approximate essentially anything that data nature throws at you. So in that sense, it's a er, i think, going back to the second part of your question, how far does this thing push us towards understanding why the plarning works? Theorent doesn't tell me how many permites, how many new ones wele need forthat rigt its. But when you combine it with other elements, it

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