Multiple Choice
What is the purpose of "kernels" in SVM?
A) Kernels try to linearize nonlinear problems and make a solution possible.
B) Kernels optimize model selection (selection of the best variables)
C) Kernels visualize SVM results
D) Kernels are the source code underlying SVM
Correct Answer:

Verified
Correct Answer:
Verified
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