Regularization for a svm classifier

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I am applying Regularization in SVM for classification, but I cannot find a specific command to do it. Is there a command for this? or I should apply SVM in one line then regularized it in the other line? I found "fitclinear" and I can apply regularization, but there is no way to add different Kernel to this command.
Thank you

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Vishal Bhutani
Vishal Bhutani 2018-9-10
By my understanding you want to train a SVM for classification with regularization. As you might be aware that ‘fitclinear’ creates a linear classification model object that contains the results of fitting a binary support vector machine to the predictors X and class labels Y. And it allows to set regularization parameter. For different kernel like RBF or Gaussian, you can try ‘fitckernel’. Here is the documentation link for that:
Another thing you can try is using ‘fitcsvm’ and in that you can vary box-constraint parameter for regularization and also you can vary kernel functions. More regularization (small boxconstraint) means you allow more points in the margin. With no regularization (large box constraint, hard margin) you allow no data points in the margin. Regularization relaxes this constraint, and the smaller boxconstraint the wider the margin but the more data points lie within the margin. Here is the documentation link for that:
  3 个评论
Vishal Bhutani
Vishal Bhutani 2018-9-11
Hi, for polynomial kernel you can select the option ‘polynomial’ in ‘KernelFunction’ in fitcsvm. Link of the documentation is attached:
Hope it helps.
B A
B A 2018-9-11
I am aware of this command, but it does not apply regularization automatically. As you mentioned before I should provide a range for box constraint and see which range is the best. Actually, I am looking for a code to run it without changing any parameters. Thanks so much.

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