In this paper, we present new optimization models for Support Vector Machine (SVM), with the aim of separating data points in two or more classes. The classification task is handled by means of nonlinear classifiers induced by kernel functions and consists in two consecutive phases: first, a classical SVM model is solved, followed by a linear search procedure, aimed at minimizing the total number of misclassified data points. To address the problem of data perturbations and protect the model against uncertainty, we construct bounded-by-norm uncertainty sets around each training data and apply robust optimization techniques. We rigorously derive the robust counterpart extension of the deterministic SVM approach, providing computationally tractable reformulations. Closed-form expressions for the bounds of the uncertainty sets in the feature space have been formulated for typically used kernel functions. Finally, extensive numerical results on real-world datasets show the benefits of the proposed robust approach in comparison with various SVM alternatives in the machine learning literature.

(2025). A novel robust optimization model for nonlinear Support Vector Machine [journal article - articolo]. In EUROPEAN JOURNAL OF OPERATIONAL RESEARCH. Retrieved from https://hdl.handle.net/10446/290747

A novel robust optimization model for nonlinear Support Vector Machine

Maggioni, Francesca;Spinelli, Andrea
2025-01-01

Abstract

In this paper, we present new optimization models for Support Vector Machine (SVM), with the aim of separating data points in two or more classes. The classification task is handled by means of nonlinear classifiers induced by kernel functions and consists in two consecutive phases: first, a classical SVM model is solved, followed by a linear search procedure, aimed at minimizing the total number of misclassified data points. To address the problem of data perturbations and protect the model against uncertainty, we construct bounded-by-norm uncertainty sets around each training data and apply robust optimization techniques. We rigorously derive the robust counterpart extension of the deterministic SVM approach, providing computationally tractable reformulations. Closed-form expressions for the bounds of the uncertainty sets in the feature space have been formulated for typically used kernel functions. Finally, extensive numerical results on real-world datasets show the benefits of the proposed robust approach in comparison with various SVM alternatives in the machine learning literature.
articolo
20-dic-2024
2025
Inglese
cartaceo
online
322
1
237
253
esperti anonimi
Settore MATH-06/A - Ricerca operativa
Machine learning; Nonlinear Support Vector Machine; Robust optimization;
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Maggioni, Francesca; Spinelli, Andrea
info:eu-repo/semantics/article
open
(2025). A novel robust optimization model for nonlinear Support Vector Machine [journal article - articolo]. In EUROPEAN JOURNAL OF OPERATIONAL RESEARCH. Retrieved from https://hdl.handle.net/10446/290747
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10446/290747
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