Abstract

The constant development of interrelated computing devices and the emergence of new network technologies have dramatically increased the Internet of Things (IoT) devices. Intrusion Detection Systems (IDSs) play a significant role in securing IoT networks. Designing an IDS that performs with maximum accuracy with minimum false alarms is a challenging task. Recently, the ensemble method considered one of the main developments in machine learning. It finds an accurate classifier by combining several classifiers. In this research, an ensemble classification model is proposed using an automatic Model Selection Method (MSM). The proposed MSM considered a vast range of classifiers with different configurations. Furthermore, The MSM used new integrated measures to evaluate and select models.The proposed models showed 0.99, 0.95, 1, and 0.99 F scores and 1, 0.98, 1, 1 ROC-AUC scores on NSL-KDD, UNSW-NB15, BoTNeTIoT, and BoTIoT dataset, respectively. The proposed models overcame all models in terms of efficiency and showed stable performance using a vast range of feature sets.

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