This paper considers the problem of predicting vehicles smog rating by applying a novel Support Vector Machine (SVM) technique. Classical SVM-type models perform a binary classification of the training observations. However, in many real-world applications only two classifying categories may not be enough. For this reason, a new multiclass Twin Parametric Margin Support Vector Machine (TPMSVM) is designed. On the basis of different characteristics, such as engine size and fuel consumption, the model aims to assign each vehicle to a specific smog rating class. To protect the model against uncertainty arising in the measurement procedure, a robust optimization extension of the multiclass TPMSVM model is formulated. Spherical uncertainty sets are considered and a tractable robust counterpart of the model is derived. Experimental results on a real-world dataset show the good performance of the robust formulation.

(2024). A Multiclass Robust Twin Parametric Margin Support Vector Machine with an Application to Vehicles Emissions . Retrieved from https://hdl.handle.net/10446/265369

A Multiclass Robust Twin Parametric Margin Support Vector Machine with an Application to Vehicles Emissions

Maggioni, Francesca;Spinelli, Andrea
2024-01-01

Abstract

This paper considers the problem of predicting vehicles smog rating by applying a novel Support Vector Machine (SVM) technique. Classical SVM-type models perform a binary classification of the training observations. However, in many real-world applications only two classifying categories may not be enough. For this reason, a new multiclass Twin Parametric Margin Support Vector Machine (TPMSVM) is designed. On the basis of different characteristics, such as engine size and fuel consumption, the model aims to assign each vehicle to a specific smog rating class. To protect the model against uncertainty arising in the measurement procedure, a robust optimization extension of the multiclass TPMSVM model is formulated. Spherical uncertainty sets are considered and a tractable robust counterpart of the model is derived. Experimental results on a real-world dataset show the good performance of the robust formulation.
francesca.maggioni@unibg.it
15-feb-2024
2024
Inglese
Machine Learning, Optimization, and Data Science. 9th International Conference, LOD 2023, Grasmere, UK, September 22–26, 2023, Revised Selected Papers, Part II
Nicosia, G.; Ojha, V.; La Malfa, E.; La Malfa, G.; Pardalos, P.M.; Umeton, R.;
978-3-031-53966-4
14506
299
310
online
Switzerland
Cham
Springer
esperti anonimi
LOD 2023: 9th International Conference on Machine Learning, Optimization and Data Science, Grasmere, UK, 22–26 September 2023
9th
Grasmere, UK
22–26 September 2023
Settore MAT/09 - Ricerca Operativa
Multiclass Classification; Support Vector Machine; Robust Optimization
   Urban Logistics and sustainable TRAnsportation: OPtimization under uncertainTY and MAchine Learning
   ULTRA OPTYMAL
   MIUR - MINISTERO ISTRUZIONE UNIVERSITA' RICERCA
info:eu-repo/semantics/conferenceObject
3
De Leone, Renato; Maggioni, Francesca; Spinelli, Andrea
1.4 Contributi in atti di convegno - Contributions in conference proceedings::1.4.01 Contributi in atti di convegno - Conference presentations
reserved
Non definito
273
(2024). A Multiclass Robust Twin Parametric Margin Support Vector Machine with an Application to Vehicles Emissions . Retrieved from https://hdl.handle.net/10446/265369
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