Support vector machines (SVMs) are widely used machine learning models, with formulations for both classification and regression tasks. In the last years, with the advent of working quantum annealers, hybrid SVM models characterised by quantum training and classical execution have been introduced. These models have demonstrated comparable performance to their classical counterparts. However, they are limited in the training set size due to the restricted connectivity of the current quantum annealers. Hence, to take advantage of large datasets, a strategy is required. In the classical domain, local SVMs, namely, SVMs trained on the data samples selected by a k -nearest neighbors model, have already proven successful. Here, the local application of quantum-trained SVM models is proposed and empirically assessed. In particular, this approach allows overcoming the constraints on the training set size of the quantum-trained models while enhancing their performance. In practice, the Fast Local Kernel Support Vector Machine (FaLK-SVM) method, designed for efficient local SVMs, has been combined with quantum-trained SVM models for binary and multiclass classification. In addition, for comparison, FaLK-SVM has been interfaced for the first time with a classical single-step multiclass SVM model (CS SVM). Concerning the empirical evaluation, D-Wave's quantum annealers and real-world datasets taken from the remote sensing domain have been employed. The results have shown the effectiveness and scalability of the proposed approach, but also its practical applicability in a real-world large-scale scenario.

Zardini, E., Delilbasic, A., Blanzieri, E., Cavallaro, G., Pastorello, D. (2024). Local Binary and Multiclass SVMs Trained on a Quantum Annealer. IEEE TRANSACTIONS ON QUANTUM ENGINEERING, 10.1109/TQE.2024.3475875, 1-12 [10.1109/tqe.2024.3475875].

Local Binary and Multiclass SVMs Trained on a Quantum Annealer

Pastorello, Davide
2024

Abstract

Support vector machines (SVMs) are widely used machine learning models, with formulations for both classification and regression tasks. In the last years, with the advent of working quantum annealers, hybrid SVM models characterised by quantum training and classical execution have been introduced. These models have demonstrated comparable performance to their classical counterparts. However, they are limited in the training set size due to the restricted connectivity of the current quantum annealers. Hence, to take advantage of large datasets, a strategy is required. In the classical domain, local SVMs, namely, SVMs trained on the data samples selected by a k -nearest neighbors model, have already proven successful. Here, the local application of quantum-trained SVM models is proposed and empirically assessed. In particular, this approach allows overcoming the constraints on the training set size of the quantum-trained models while enhancing their performance. In practice, the Fast Local Kernel Support Vector Machine (FaLK-SVM) method, designed for efficient local SVMs, has been combined with quantum-trained SVM models for binary and multiclass classification. In addition, for comparison, FaLK-SVM has been interfaced for the first time with a classical single-step multiclass SVM model (CS SVM). Concerning the empirical evaluation, D-Wave's quantum annealers and real-world datasets taken from the remote sensing domain have been employed. The results have shown the effectiveness and scalability of the proposed approach, but also its practical applicability in a real-world large-scale scenario.
2024
Zardini, E., Delilbasic, A., Blanzieri, E., Cavallaro, G., Pastorello, D. (2024). Local Binary and Multiclass SVMs Trained on a Quantum Annealer. IEEE TRANSACTIONS ON QUANTUM ENGINEERING, 10.1109/TQE.2024.3475875, 1-12 [10.1109/tqe.2024.3475875].
Zardini, Enrico; Delilbasic, Amer; Blanzieri, Enrico; Cavallaro, Gabriele; Pastorello, Davide
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11585/991334
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