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Old 09-16-2012, 12:07 PM
rainbow rainbow is offline
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Join Date: Jul 2012
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Default Re: Which kernel to use?

Quote:
Originally Posted by JohnH View Post
The caveat is that considering additional kernels increases the complexity of \mathcal H and thus requires larger data sets to mitigate the risk of overfitting.
Good point!

Quote:
I suspect that selection of a kernel, without snooping in the data, is more art than science, but may be guided by one's understanding (read intuition) of the expected characteristics of the data.
So, one strategy could be to think in terms of a suitable nonlinear transformation (that would match the data) and then find a kernel matching that transformation. One of the great benefits with SVM is that that you never visit the feature space, you just exploit it via the kernel space (kernel trick).
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