Design and Testing Novel One-Class Classifier Based on Polynomial Interpolation with Application to Networking Security

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Abstract

This work exploits the concept of one-class classifier applied to the problem of anomaly detection in communication networks. The article presents the design of an innovative anomaly detection algorithm based on polynomial interpolation technique and statistical analysis. The innovative method is applied to datasets largely used in the scientific community for bench-marking such as KDD99, UNSW-NB15 and CSE-CIC-IDS-2018, and further evaluated with application to a novel available dataset EDGE-IIOTSET 2022. The paper also reports experimental results showing that the proposed methodology outperforms classic one-class classifiers, such as Extreme Learning Machine and Support Vector Machine models, and rule-based intrusion detection system like SNORT. With respect to binary classifiers, this work has the advantage of not requiring any a-priori knowledge about attacks and is based on the collection of only normal data traffic.

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Dini, P., Begni, A., Ciavarella, S., De Paoli, E., Fiorelli, G., Silvestro, C., & Saponara, S. (2022). Design and Testing Novel One-Class Classifier Based on Polynomial Interpolation with Application to Networking Security. IEEE Access, 10, 67910–67924. https://doi.org/10.1109/ACCESS.2022.3186026

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