Hyper-parameter optimization for a custom kernel SVR with Bayesian optimization?

조회 수: 8 (최근 30일)
Keblis
Keblis 2016년 11월 15일
답변: Don Mathis 2017년 1월 8일
Hi everyone. I want to optimize hyper-parameters for a SVR in Matlab using Bayesian optimization toolbox, but for a custom Kernel not for the default kernels. Because in Matlab help it says that for a custom kernel you have to define kernel scale within kernel. Has anybody experience with that problem? I want to define my own kernel and then to optimize hyper parameters for a regression problem using support vector machines. With default kernels it works very well, but since there is any example it is a bit hard to understand.

답변 (1개)

Don Mathis
Don Mathis 2017년 1월 8일
You'll need to use the bayesopt function to do that. There is an example of support vector classification on this page: http://www.mathworks.com/help/stats/bayesian-optimization-case-study.html. Maybe you can adapt it to your regression problem.

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