SVM Kerkel Scale Auto

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nibant
nibant el 26 de Nov. de 2015
Comentada: sh10101 el 23 de Oct. de 2017
Hello!
I am currently working with SVMs. I am using the Gaussian kernel function and I want to quickly find a good parameter for my training data (I am only concerned with the sigma/gamma, not with the soft margin C. For the soft margin I am using another method)
In the Matlab documentation is says: "Pass the data to fitcsvm, and set the name-value pair arguments 'KernelScale','auto'. Suppose that the trained SVM model is called SVMModel. The software uses a heuristic procedure to select the kernel scale. The heuristic procedure uses subsampling. Therefore, to reproduce results, set a random number seed using rng before training the classifier."
So, what I wanted to know: is this heuristic trying to select the "best" parameter with respect to my training data?
Thank you,
  1 comentario
sh10101
sh10101 el 23 de Oct. de 2017
Hi,
I am also looking for an answer to you question. Did you find a suitable answer during your time studying SVMs?
Thank you,

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