LGMLNov 10, 2024

Locally Adaptive One-Class Classifier Fusion with Dynamic $\ell$p-Norm Constraints for Robust Anomaly Detection

arXiv:2411.06406v21 citationsh-index: 16Pattern Recognition
Originality Incremental advance
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This work addresses anomaly detection challenges for real-time applications, offering an incremental improvement through adaptive fusion and optimization.

The paper tackles the problem of robust anomaly detection by proposing a locally adaptive one-class classifier fusion method with dynamic ℓp-norm constraints, achieving up to 19-fold speed improvements and superior performance on benchmark datasets.

This paper presents a novel approach to one-class classifier fusion through locally adaptive learning with dynamic $\ell$p-norm constraints. We introduce a framework that dynamically adjusts fusion weights based on local data characteristics, addressing fundamental challenges in ensemble-based anomaly detection. Our method incorporates an interior-point optimization technique that significantly improves computational efficiency compared to traditional Frank-Wolfe approaches, achieving up to 19-fold speed improvements in complex scenarios. The framework is extensively evaluated on standard UCI benchmark datasets and specialized temporal sequence datasets, demonstrating superior performance across diverse anomaly types. Statistical validation through Skillings-Mack tests confirms our method's significant advantages over existing approaches, with consistent top rankings in both pure and non-pure learning scenarios. The framework's ability to adapt to local data patterns while maintaining computational efficiency makes it particularly valuable for real-time applications where rapid and accurate anomaly detection is crucial.

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