3min chapter

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

Machine Learning Street Talk (MLST)

CHAPTER

Neural Networks - Are They Adaptable?

neural networks are pramatrized models. They place all of these basis functions in the ambuent space. And where those functions are placed is of interest to us. If you have a lot of data in one region and no change, perfectly linear, flat function. As soon as one basis function hits that data, it'll go to the gradin. It goes to zero. So i don't need more information there. This is where classical techniques and neral net neral networks diverge. You kow, i'm working on this theory. I want to have a good, robust theory for neral networks. M but the where they diverge is the classical techniques largely

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