A Newton method solves the proposed L0/1-SQSSVM model with proven local quadratic convergence and reports higher accuracy plus lower runtime than prior methods on artificial and benchmark data.
Support vector machines with the ramp loss and the hard margin loss
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Newton Method for Soft Quadratic Surface Support Vector Machine with 0-1 Loss Function
A Newton method solves the proposed L0/1-SQSSVM model with proven local quadratic convergence and reports higher accuracy plus lower runtime than prior methods on artificial and benchmark data.