Support Vector Machines use kernel functions to do all the hard work and this StatQuest dives deep into one of the most popular: The Radial (RBF) Kernel. We talk about the parameter values, how they calculate high-dimensional coordinates and then we'll figure out, step-by-step, how the Radial Kernel works in infinite dimensions.
NOTE: This StatQuest assumes you already know about...
Support Vector Machines: • Support Vector Machine...
Cross Validation: • Machine Learning Funda...
The Polynomial Kernel: • Support Vector Machine...
ALSO NOTE: This StatQuest is based on...
1) The description of Kernel Functions, and associated concepts on pages 352 to 353 of the Introduction to Statistical Learning in R: faculty.marshal...
2) The derivation of the of the infinite dot product is based on Matthew Bernstein's notes: pages.cs.wisc.e...
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