In SVM, the _________ kernel allows for complex transformations of data, making it possible to find a hyperplane even in non-linearly separable data.
- Linear
- Polynomial
- RBF
- Sigmoid
The Radial Basis Function (RBF) kernel allows for complex transformations, making it suitable for non-linearly separable data.
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