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Satterthwaite Approximation of the Distribution of SPE Scores: An R-Simulation-Based Improvement of the R-PCA-Based Outlier Detection Method | IEEE Journals & Magazine | IEEE Xplore

Satterthwaite Approximation of the Distribution of SPE Scores: An R-Simulation-Based Improvement of the R-PCA-Based Outlier Detection Method


Abstract:

Outlier detection is a significant challenge in Internet of Things (IoT)-based systems, which encompass a multitude of sensor nodes deployed for diverse applications. Ens...Show More

Abstract:

Outlier detection is a significant challenge in Internet of Things (IoT)-based systems, which encompass a multitude of sensor nodes deployed for diverse applications. Ensuring accurate data transmission from these nodes to base stations is crucial, as outliers (fault/event/intrusion) can adversely impact data processing accuracy and overall Quality of Service. The principal component analysis (PCA) has gained popularity for outlier detection in IoT, with recursive PCA (R-PCA) being a widely used method. In this article, we explore popular PCA-based approaches and present an optimized, real-time, and reproducible enhancement to the existing R-PCA method. Our proposed improvement focuses on a data-driven approximation of the distribution of squared prediction error (SPE) scores, a fundamental component of PCA-based outlier detection. We address theoretical ambiguities in the assumptions underlying SPE scores in the existing R-PCA method. Through simulations, we demonstrate the inaccurate distributional assumption of SPE scores in the specified scheme. Additionally, we introduce a more suitable Satterthwaite-based approximation of the SPE score distribution, supported by quantile-quantile (Q-Q) plots. The effectiveness of the proposed approximation is validated through performance evaluation metrics, demonstrating its superiority over the Gaussian approximation used in R-PCA schemes. Furthermore, we provide an overview of our proposed scheme, which can be implemented in any PCA-based outlier detection system used by IoT practitioners and engineers. Our research contributes to advancing outlier detection methodologies in IoT-based systems, enabling more reliable anomaly detection and improved system performance.
Published in: IEEE Internet of Things Journal ( Volume: 11, Issue: 20, 15 October 2024)
Page(s): 32791 - 32803
Date of Publication: 06 June 2024

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