Enhancing Imbalance Learning: A Novel Slack-Factor Fuzzy SVM Approach
M. Tanveer, Anushka Tiwari, Mushir Akhtar, C.T. Lin

TL;DR
This paper introduces an improved fuzzy SVM model with a novel location parameter that better handles class imbalance, noise, and outliers, leading to more accurate minority class classification in imbalanced datasets.
Contribution
The paper proposes ISFFSVM, an enhanced slack-factor fuzzy SVM with a new location parameter that improves minority class detection and overall performance.
Findings
ISFFSVM outperforms baseline classifiers on KEEL datasets.
The model achieves higher F1, MCC, and AUC-PR scores.
The location parameter effectively constrains the hyperplane extension.
Abstract
In real-world applications, class-imbalanced datasets pose significant challenges for machine learning algorithms, such as support vector machines (SVMs), particularly in effectively managing imbalance, noise, and outliers. Fuzzy support vector machines (FSVMs) address class imbalance by assigning varying fuzzy memberships to samples; however, their sensitivity to imbalanced datasets can lead to inaccurate assessments. The recently developed slack-factor-based FSVM (SFFSVM) improves traditional FSVMs by using slack factors to adjust fuzzy memberships based on misclassification likelihood, thereby rectifying misclassifications induced by the hyperplane obtained via different error cost (DEC). Building on SFFSVM, we propose an improved slack-factor-based FSVM (ISFFSVM) that introduces a novel location parameter. This novel parameter significantly advances the model by constraining the DEC…
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Taxonomy
TopicsImbalanced Data Classification Techniques · Vehicle License Plate Recognition · Text and Document Classification Technologies
