MTAT.03.227 Machine Learning (Spring 2015) Exercise session XV: Kernel Methods
نویسنده
چکیده
The aim of this exercise session is to get acquainted with the idea of kernel methods. As usual, for all exercises you need to write a brief explanation and, for most of them, also a short piece of code demonstrating the result. You can submit your whole solution as a single decently commented R or Rmd file, provided it is sequentially readable and/or executable. We shall use the kernlab R package. Install it using install.packages. kernlab
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