4min chapter

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#69 DR. THOMAS LUX - Interpolation of Sparse High-Dimensional Data

Machine Learning Street Talk (MLST)

CHAPTER

Neural Networks Are Really Good At

Thomas: Neral networks are really good at solving non convex optimization problems over your data. In training, if you're tring to prove something, what about my network or model architecture can totally prevent me from converging? And so i went in and I recorded, how do all the shift terms change for telinear basis functions? How do their directions change? How their magnitudes change? What i found was really interesting is that they don't move very much. The only thing that changes is their pose. So there's some great theory that's underneath this that we could dig into.

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