3min chapter

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

Machine Learning Street Talk (MLST)

CHAPTER

Is Delowney a Linear Shepherd?

Machine learning is like partitioning space. We know that delowney converges on the true underlying function, as long as it's a deterministic or it's not sarcastic and has exact values. What if? What if the function is really important in this part of space but then everything in between isn't important? The neal networks can reduce the dimension of your whole input space and simultaneously capture the fact that there are disperate septs in the space that are important. And unless you've ou know, come up with something like we're just taing about piecewise linearity, i don't think it's necessary to bring in non linearity at this point.

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