Twin Restricted Kernel Machines for Multiview Classification
- URL: http://arxiv.org/abs/2512.15757v1
- Date: Fri, 12 Dec 2025 03:54:19 GMT
- Title: Twin Restricted Kernel Machines for Multiview Classification
- Authors: A. Quadir, M. Sajid, Mushir Akhtar, M. Tanveer,
- Abstract summary: Multi-view learning (MVL) focuses on improving generalization performance by leveraging complementary information from multiple perspectives or views.<n>We introduce the multiview twin restricted kernel machine (TMvRKM), a novel model that integrates the strengths of kernel machines with the multiview framework.<n>The proposed TMvRKM model is rigorously tested on UCI, KEEL, and AwA benchmark datasets.
- Score: 10.208788616684162
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- 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.
Related papers
- Generalized Deep Multi-view Clustering via Causal Learning with Partially Aligned Cross-view Correspondence [72.41989962665285]
Multi-view clustering (MVC) aims to explore the common clustering structure across multiple views.<n>However, real-world scenarios often present a challenge as only partial data is consistently aligned across different views.<n>We design a causal multi-view clustering network, termed CauMVC, to tackle this problem.
arXiv Detail & Related papers (2025-09-19T14:31:40Z) - Balanced Multi-view Clustering [56.17836963920012]
Multi-view clustering (MvC) aims to integrate information from different views to enhance the capability of the model in capturing the underlying data structures.<n>The widely used joint training paradigm in MvC is potentially not fully leverage the multi-view information.<n>We propose a novel balanced multi-view clustering (BMvC) method, which introduces a view-specific contrastive regularization (VCR) to modulate the optimization of each view.
arXiv Detail & Related papers (2025-01-05T14:42:47Z) - Partial Multi-View Clustering via Meta-Learning and Contrastive Feature Alignment [13.511433241138702]
Partial multi-view clustering (PVC) presents significant challenges practical research problem for data analysis in real-world applications.
Existing clustering methods struggle to handle incomplete views effectively, leading to suboptimal clustering performance.
We propose a novel dual optimization framework based on contrastive learning, which aims to maximize the consistency of latent features in incomplete multi-view data.
arXiv Detail & Related papers (2024-11-14T19:16:01Z) - Enhancing Multiview Synergy: Robust Learning by Exploiting the Wave Loss Function with Consensus and Complementarity Principles [0.0]
This paper introduces Wave-MvSVM, a novel multiview support vector machine framework leveraging the wave loss (W-loss) function.
Wave-MvSVM ensures a more comprehensive and resilient learning process by integrating both consensus and complementarity principles.
Extensive empirical evaluations across diverse datasets demonstrate the superior performance of Wave-MvSVM.
arXiv Detail & Related papers (2024-08-13T11:25:22Z) - Multiview learning with twin parametric margin SVM [0.0]
Multiview learning (MVL) seeks to leverage the benefits of diverse perspectives to complement each other.
We propose multiview twin parametric margin support vector machine (MvTPMSVM)
MvTPMSVM constructs parametric margin hyperplanes corresponding to both classes, aiming to regulate and manage the impact of the heteroscedastic noise structure.
arXiv Detail & Related papers (2024-08-04T10:16:11Z) - DealMVC: Dual Contrastive Calibration for Multi-view Clustering [78.54355167448614]
We propose a novel Dual contrastive calibration network for Multi-View Clustering (DealMVC)
We first design a fusion mechanism to obtain a global cross-view feature. Then, a global contrastive calibration loss is proposed by aligning the view feature similarity graph and the high-confidence pseudo-label graph.
During the training procedure, the interacted cross-view feature is jointly optimized at both local and global levels.
arXiv Detail & Related papers (2023-08-17T14:14:28Z) - Semi-supervised multi-view concept decomposition [30.699496411869834]
Concept Factorization (CF) has demonstrated superior performance in multi-view clustering tasks.
We propose a novel semi-supervised multi-view concept factorization model, named SMVCF.
We conduct experiments on four diverse datasets to evaluate the performance of SMVCF.
arXiv Detail & Related papers (2023-07-03T10:50:44Z) - Late Fusion Multi-view Clustering via Global and Local Alignment
Maximization [61.89218392703043]
Multi-view clustering (MVC) optimally integrates complementary information from different views to improve clustering performance.
Most of existing approaches directly fuse multiple pre-specified similarities to learn an optimal similarity matrix for clustering.
We propose late fusion MVC via alignment to address these issues.
arXiv Detail & Related papers (2022-08-02T01:49:31Z) - Unsupervised Multi-view Clustering by Squeezing Hybrid Knowledge from
Cross View and Each View [68.88732535086338]
This paper proposes a new multi-view clustering method, low-rank subspace multi-view clustering based on adaptive graph regularization.
Experimental results for five widely used multi-view benchmarks show that our proposed algorithm surpasses other state-of-the-art methods by a clear margin.
arXiv Detail & Related papers (2020-08-23T08:25:06Z) - Generative Partial Multi-View Clustering [133.36721417531734]
We propose a generative partial multi-view clustering model, named as GP-MVC, to address the incomplete multi-view problem.
First, multi-view encoder networks are trained to learn common low-dimensional representations, followed by a clustering layer to capture the consistent cluster structure across multiple views.
Second, view-specific generative adversarial networks are developed to generate the missing data of one view conditioning on the shared representation given by other views.
arXiv Detail & Related papers (2020-03-29T17:48:27Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.