How to estimate AIC for SVM
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chaturika Jayawardane
el 13 de Jun. de 2016
Comentada: Vidya Viswanathan
el 15 de Jun. de 2016
Hi,
Is there a way to estimate AIC for an SVM model? Or is there any other type of measure that can be used to compare different SVM models.
Thak you
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Vidya Viswanathan
el 15 de Jun. de 2016
Hi Chaturika,
I am aware that there is a function to estimate AIC (Akaike's Information Criterion) for an estimated model that is available with the System Identification Toolbox. However, from my understanding, that functionality seems to apply to systems and I am not sure if you can use it directly on an SVM classifier object. For your reference, the following is the documentation link for the function:
However, there seems to be an alternative function that is used specifically to compare the accuracies of two classification models. This function is called "compareHoldout" and the following is the documentation link for the function:
This could probably help you compare two different SVM models.
Regards,
Vidya
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