Support Vector Machine (SVM) is one of the most important class of machine learning models and algorithms, and has been successfully applied in various fields. Nonlinear optimization plays a crucial role in SVM methodology, both in defining the machine learning models and in designing convergent and efficient algorithms for large-scale training problems. In this paper we present the convex programming problems underlying SVM focusing on supervised binary classification. We analyze the most important and used optimization methods for SVM training problems, and we discuss how the properties of these problems can be incorporated in designing useful algorithms.

Piccialli, V., Sciandrone, M. (2018). Nonlinear optimization and support vector machines. 4OR, 16(2), 111-149 [10.1007/s10288-018-0378-2].

Nonlinear optimization and support vector machines

Piccialli, V;
2018-01-01

Abstract

Support Vector Machine (SVM) is one of the most important class of machine learning models and algorithms, and has been successfully applied in various fields. Nonlinear optimization plays a crucial role in SVM methodology, both in defining the machine learning models and in designing convergent and efficient algorithms for large-scale training problems. In this paper we present the convex programming problems underlying SVM focusing on supervised binary classification. We analyze the most important and used optimization methods for SVM training problems, and we discuss how the properties of these problems can be incorporated in designing useful algorithms.
2018
Pubblicato
Rilevanza internazionale
Articolo
Esperti anonimi
Settore MAT/09 - RICERCA OPERATIVA
English
Statistical learning theory; support vector machine; convex quadratic programming
Piccialli, V., Sciandrone, M. (2018). Nonlinear optimization and support vector machines. 4OR, 16(2), 111-149 [10.1007/s10288-018-0378-2].
Piccialli, V; Sciandrone, M
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2108/200782
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