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Explainable Transformer-based Intrusion Detection in Internet of Medical Things (IoMT) Networks

Rajesh Kalakoti, Sven Nõmm, Hayretdin Bahşi

202412 citationsDOI

Abstract

Internet of Medical Things (IoMT) systems have brought transformative benefits to patient monitoring and remote diagnosis in healthcare. However, these systems are prone to various cyber attacks that have a high impact on security and privacy. Detecting such attacks is crucial for implementing timely and effective countermeasures. Machine learning methods have been applied for intrusion detection tasks in various networks, but explaining the reasons for detection decisions remains an obstacle for security analysts. In this paper, we demonstrate that Transformer architecture, the core of the recent revolutionary large language models, constitutes a promising solution for intrusion detection in IoMT networks. We utilized a comprehensive dataset, CICIoMT2024, recently released specifically for these networks. We created a binary classification model for discriminating attacks from benign traffic and a multi-class model for the identification of specific attack types. We applied Explainable AI (XAi) methods such as LIME and SHAP to generate posthoc explanations for the model decisions. We evaluated and compared the quality of explanations based on three metrics: faithfulness, sensitivity, and complexity. Our findings demonstrate that the applied XAI methods enhance transparency in the predictions of Transformer-based intrusion detection models for IoMT networks, proving that both transparency and high performance can be achieved simultaneously.

Topics & Concepts

Computer scienceComputer networkThe InternetIntrusion detection systemInternet of ThingsComputer securityIntrusionTransformerWorld Wide WebEngineeringElectrical engineeringGeologyGeochemistryVoltageBrain Tumor Detection and Classification
Explainable Transformer-based Intrusion Detection in Internet of Medical Things (IoMT) Networks | Litcius