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

Machine Learning Street Talk (MLST)

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Unpacking Interpolation in Machine Learning

This chapter explores interpolation methods in machine learning, linking them to traditional numerical analysis and geometric interpretations. It delves into concepts like Delaunay triangulation, examining their importance in approximating high-dimensional data and enhancing neural networks' performance. The discussion also highlights the challenges of interpolation in sparse data environments and the implications of using neural networks for tackling non-linear problems.

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