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Quadratic Surface Support Vector Machine with L1 Norm Regularization

About

We propose $\ell_1$ norm regularized quadratic surface support vector machine models for binary classification in supervised learning. We establish their desired theoretical properties, including the existence and uniqueness of the optimal solution, reduction to the standard SVMs over (almost) linearly separable data sets, and detection of true sparsity pattern over (almost) quadratically separable data sets if the penalty parameter of $\ell_1$ norm is large enough. We also demonstrate their promising practical efficiency by conducting various numerical experiments on both synthetic and publicly available benchmark data sets.

Ahmad Mousavi, Zheming Gao, Lanshan Han, Alvin Lim• 2019

Related benchmarks

TaskDatasetResultRank
Binary ClassificationHaberman
Accuracy0.7356
59
Binary ClassificationGlass
Accuracy94.39
10
Multiclass ClassificationIris
Accuracy97.33
10
Binary ClassificationImmunotherapy
Accuracy81.11
10
Binary ClassificationAbalone
Accuracy88.79
10
Binary ClassificationCTG
Accuracy98.21
10
Binary Classificationecoli
Accuracy97.03
10
ClassificationGCD
Accuracy77.4
9
ClassificationCCC
Accuracy91.56
9
ClassificationAUS
Accuracy86.38
9
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