Please use this identifier to cite or link to this item: https://dspace.iiti.ac.in/handle/123456789/17460
Title: Twin Restricted Kernel Machines for Multiview Classification
Authors: Quadir, A.
Sajid, M.
Akhtar, Mushir
Tanveer, M. Sayed
Keywords: Kernel methods;Multiview support vector machine;Restricted Boltzmann machines;Restricted kernel machines
Issue Date: 2025
Publisher: Institute of Electrical and Electronics Engineers Inc.
Citation: Quadir, A., M. Sajid, Mushir Akhtar, and M. Tanveer. 2025. “Twin Restricted Kernel Machines for Multiview Classification.” in Proc Int Jt Conf Neural Networks. Institute of Electrical and Electronics Engineers Inc.
Abstract: Multi-view learning (MVL) is an emerging field in machine learning that focuses on improving generalization performance by leveraging complementary information from multiple perspectives or views. Various multi-view support vector machine (MvSVM) approaches have been developed, demonstrating significant success. Moreover, these models face challenges in effectively capturing decision boundaries in high-dimensional spaces using the kernel trick. They are also prone to errors and struggle with view inconsistencies, which are common in multi-view datasets. In this work, we introduce the multiview twin restricted kernel machine (TMvRKM), a novel model that integrates the strengths of kernel machines with the multiview framework, addressing key computational and generalization challenges associated with traditional kernel-based approaches. Unlike traditional methods that rely on solving large quadratic programming problems (QPPs), the proposed TMvRKM efficiently determines an optimal separating hyperplane through a regularized least squares approach, enhancing both computational efficiency and classification performance. The primal objective of TMvRKM includes a coupling term designed to balance errors across multiple views effectively. By integrating early and late fusion strategies, TMvRKM leverages the collective information from all views during training while remaining flexible to variations specific to individual views. The proposed TMvRKM model is rigorously tested on UCI, KEEL, and AwA benchmark datasets. Both experimental results and statistical analyses consistently highlight its exceptional generalization performance, outperforming baseline models in every scenario. The source code of the proposed TMvRKM model is available at https://github.com/mtanveer1/TMvRKM. © 2025 IEEE.
URI: https://dx.doi.org/10.1109/IJCNN64981.2025.11228247
https://dspace.iiti.ac.in:8080/jspui/handle/123456789/17460
ISBN: 978-1509060146
9780738133669
9781728119854
9781665488679
9781457710865
9798350359312
9781728169262
9781728186719
9781509061815
9781509006199
ISSN: 2161-4393
Type of Material: Conference Paper
Appears in Collections:Department of Mathematics

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