LGOCOct 30, 2025

Multi-Task Learning Based on Support Vector Machines and Twin Support Vector Machines: A Comprehensive Survey

arXiv:2510.26392v1h-index: 100
AI Analysis

It provides a comprehensive resource for researchers and practitioners interested in interpretable, margin-based multi-task learning, but is incremental as it surveys existing methods.

This survey examines multi-task learning approaches using Support Vector Machines and Twin Support Vector Machines, highlighting their interpretability and effectiveness with small datasets, and identifies research gaps for future development.

Multi-task learning (MTL) enables simultaneous training across related tasks, leveraging shared information to improve generalization, efficiency, and robustness, especially in data-scarce or high-dimensional scenarios. While deep learning dominates recent MTL research, Support Vector Machines (SVMs) and Twin SVMs (TWSVMs) remain relevant due to their interpretability, theoretical rigor, and effectiveness with small datasets. This chapter surveys MTL approaches based on SVM and TWSVM, highlighting shared representations, task regularization, and structural coupling strategies. Special attention is given to emerging TWSVM extensions for multi-task settings, which show promise but remain underexplored. We compare these models in terms of theoretical properties, optimization strategies, and empirical performance, and discuss applications in fields such as computer vision, natural language processing, and bioinformatics. Finally, we identify research gaps and outline future directions for building scalable, interpretable, and reliable margin-based MTL frameworks. This work provides a comprehensive resource for researchers and practitioners interested in SVM- and TWSVM-based multi-task learning.

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