TL;DR
This paper introduces MvTPMSVM, a multiview twin parametric margin SVM that improves computational efficiency and handles heteroscedastic noise, demonstrating superior performance on benchmark datasets.
Contribution
The paper proposes a novel MvTPMSVM model that avoids matrix inversions and manages heteroscedastic noise, enhancing multiview learning performance.
Findings
Superior generalization on benchmark datasets
Enhanced computational efficiency
Effective handling of heteroscedastic noise
Abstract
Multiview learning (MVL) seeks to leverage the benefits of diverse perspectives to complement each other, effectively extracting and utilizing the latent information within the dataset. Several twin support vector machine-based MVL (MvTSVM) models have been introduced and demonstrated outstanding performance in various learning tasks. However, MvTSVM-based models face significant challenges in the form of computational complexity due to four matrix inversions, the need to reformulate optimization problems in order to employ kernel-generated surfaces for handling non-linear cases, and the constraint of uniform noise assumption in the training data. Particularly in cases where the data possesses a heteroscedastic error structure, these challenges become even more pronounced. In view of the aforementioned challenges, we propose multiview twin parametric margin support vector machine…
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