Covers Kernel Density Estimation focusing on bandwidth selection, curse of dimensionality, bias-variance tradeoff, and parametric vs nonparametric models.
Discusses kernel methods in machine learning, focusing on kernel regression and support vector machines, including their formulations and applications.