Feb. 6, 2024, 5:10 a.m. | Ali Mehrban Pegah Ahadian

cs.CR updates on arXiv.org arxiv.org

Malware detection in IoT environments necessitates robust methodologies. This study introduces a CNN-LSTM hybrid model for IoT malware identification and evaluates its performance against established methods. Leveraging K-fold cross-validation, the proposed approach achieved 95.5% accuracy, surpassing existing methods. The CNN algorithm enabled superior learning model construction, and the LSTM classifier exhibited heightened accuracy in classification. Comparative analysis against prevalent techniques demonstrated the efficacy of the proposed model, highlighting its potential for enhancing IoT security. The study advocates for future exploration …

accuracy algorithm cnn construction cs.cr cs.lg cs.ni detection environments hybrid identification iot iot malware machine machine learning malware malware detection malware identification performance study systems techniques validation

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