TL;DR
This paper introduces two novel intuitionistic fuzzy generalized eigenvalue proximal support vector machines (IF-GEPSVM and IF-IGEPSVM) that enhance robustness and efficiency in noisy, real-world datasets by incorporating fuzzy scores and simplified optimization.
Contribution
The paper proposes two new fuzzy-based models, IF-GEPSVM and IF-IGEPSVM, improving robustness and reducing computational complexity compared to existing GEPSVM methods.
Findings
Superior generalization performance on UCI and KEEL datasets.
Enhanced robustness against label noise.
Effective application to USPS recognition dataset.
Abstract
Generalized eigenvalue proximal support vector machine (GEPSVM) has attracted widespread attention due to its simple architecture, rapid execution, and commendable performance. GEPSVM gives equal significance to all samples, thereby diminishing its robustness and efficacy when confronted with real-world datasets containing noise and outliers. In order to reduce the impact of noises and outliers, we propose a novel intuitionistic fuzzy generalized eigenvalue proximal support vector machine (IF-GEPSVM). The proposed IF-GEPSVM assigns the intuitionistic fuzzy score to each training sample based on its location and surroundings in the high-dimensional feature space by using a kernel function. The solution of the IF-GEPSVM optimization problem is obtained by solving a generalized eigenvalue problem. Further, we propose an intuitionistic fuzzy improved GEPSVM (IF-IGEPSVM) by solving the…
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Taxonomy
MethodsSoftmax · Attention Is All You Need
