Statistical Modelling-Driven Machine Learning for Security Assessment of IoMT Devices
Listed in
This article is not in any list yet, why not save it to one of your lists.Abstract
This paper addresses the critical challenges in network security, particularly in Internet of Medical Things (IoMT), through advanced machine learning approaches. We propose a high-performance cybersecurity framework leveraging a carefully fine-tuned XGBoost classifier to detect malicious attacks with superior predictive accuracy while maintaining interpretability. Our comprehensive evaluation compares the proposed model with a well-regularized logistic regression baseline using key performance metrics. Additionally, we analyze the security-cost trade-off in designing machine learning systems for threat detection and employ SHAP (SHapley Additive exPlanations) to identify key features driving predictions. We further introduce a late fusion approach based on max voting that effectively combines the strengths of both models. Results demonstrate that while XGBoost achieves higher accuracy (0.97) and recall (1.00) compared to logistic regression, our late fusion model provides a more balanced performance with improved precision (0.98) and reduced false negatives, making it particularly suitable for security-sensitive applications. This work contributes to the development of robust, interpretable, and efficient machine learning solutions for addressing evolving cybersecurity challenges in networked environments.