Empowering Cyberattack Identification in IoHT Networks With Neighborhood-Component-Based Improvised Long Short-Term Memory
2024; Institute of Electrical and Electronics Engineers; Volume: 11; Issue: 9 Linguagem: Inglês
10.1109/jiot.2024.3354988
ISSN2372-2541
AutoresManish Kumar, Changjong Kim, Yongseok Son, Sushil Kumar Singh, Sunggon Kim,
Tópico(s)Information and Cyber Security
ResumoCybersecurity has become an inevitable concern in the healthcare industry due to the rapid growth of the Internet of Health Things (IoHT). The IoHT is revolutionizing healthcare by enabling remote access to hospital equipment, real-time patient monitoring, and urgent alerts to patients and hospitals. However, the convenience of these systems also makes them vulnerable to cyberattacks, with hackers seeking to disrupt health services or extort money through ransomware attacks. Efficiently detecting multiple threats is a challenging task because IoHT generates large temporal data and system log information. In this paper, we propose time series classification models for the identification of potential cyberattacks in IoHT networks. First, we introduce Neighborhood Component Analysis (NCA) with modifications of the regularization parameter to select the vital input features. With the selected features, we propose two LSTM-based models: Directed Acyclic Graph-based Long Short-Term Memory (DAG-LSTM) and Projected Layer-based Long Short-Term Memory (PL-LSTM) for detecting cyberattacks. We evaluate the existing time series classification models (i.e., GRU, LSTM, and Bi-LSTM) and proposed models (i.e., DAG-LSTM and PL-LSTM) using real-world IoHT data. We also validate the models by applying a non-parametric statistical test, Friedman test. Our evaluation results show that the proposed DAG-LSTM achieves the highest accuracy with 99.89% training and 92.04% an average testing accuracy.
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