In the immediate past chapters we developed several techniques for the design of linear classifiers, such as logistic regression, perceptron, and support vector machines (SVM). These algorithms are suitable for data that are linearly separable; otherwise, their performance degrades significantly. In this chapter we explain how the methods can be adjusted to determine nonlinear separation surfaces.
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