Litcius/Paper detail

Explainable AI-based Intrusion Detection in the Internet of Things

Marios Siganos, Panagiotis Radoglou‐Grammatikis, Igor Kotsiuba, Evangelos Markakis, Ioannis D. Moscholios, Sotirios K. Goudos, Panagiotis Sarigiannidis

202339 citationsDOIOpen Access PDF

Abstract

The revolution of Artificial Intelligence (AI) has brought about a significant evolution in the landscape of cyberattacks. In particular, with the increasing power and capabilities of AI, cyberattackers can automate tasks, analyze vast amounts of data, and identify vulnerabilities with greater precision. On the other hand, despite the multiple benefits of the Internet of Things (IoT), it raises severe security issues. Therefore, it is evident that the presence of efficient intrusion detection mechanisms is critical. Although Machine Learning (ML) and Deep Learning (DL)-based IDS have already demonstrated their detection efficiency, they still suffer from false alarms and explainability issues that do not allow security administrators to trust them completely compared to conventional signature/specification-based IDS. In light of the aforementioned remarks, in this paper, we introduce an AI-powered IDS with explainability functions for the IoT. The proposed IDS relies on ML and DL methods, while the SHapley Additive exPlanations (SHAP) method is used to explain decision-making. The evaluation results demonstrate the efficiency of the proposed IDS in terms of detection performance and explainable AI (XAI).

Topics & Concepts

Intrusion detection systemComputer scienceInternet of ThingsArtificial intelligenceThe InternetSignature (topology)Machine learningComputer securityWorld Wide WebMathematicsGeometryNetwork Security and Intrusion DetectionAdversarial Robustness in Machine LearningAnomaly Detection Techniques and Applications
Explainable AI-based Intrusion Detection in the Internet of Things | Litcius