2min chapter

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

Machine Learning Street Talk (MLST)

CHAPTER

The Only Required Property of a Linear Function in Any Dimension

A linear function in any dimension is defined exactly by d plus one points. And so when you break up all your data, you take your infut space and you group them in this way. Then you form a unique, a piecewise linear interpret of your data. So that was what i think was of most interest to my adviser,. In a lot of times, a te gran school girs. Wen, unique is really good, righ, because we want to prove things. You need to say with confidence that this is the only outcome. Once you have a delowning messh, you can start to actually prove properties of the error.

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