Abstract

Today, connected systems are widely used with the recent developments in technology. The internet- connected devices create data traffic when communicating with each other. These data may contain extremely confidential information. Observers can obtain confidential information from the traffic when the security of this traffic cannot be adequately ensured. This confidential information can be personal information as well as information about the type of device used by the person. Even if the traffic is en- crypted, the attacker can obtain information about these devices using machine learning algorithms. This paper presents the importance of the effect of device type number for the classification of IoT devices. Therefore, inference attacks on privacy with machine learning algorithms, attacks on machine learning models, and the padding method that is commonly used against such attacks are presented. Moreover, experiments are carried out by using the dataset of the traffic generated by the Internet of Things (IoT) devices. For this purpose, Random Forest, Decision Tree, and k-Nearest Neighbors (k-NN) classification algorithms are compared and the accuracy rate changes according to the number of devices are presented. According to the results, the Random Forest and Decision Tree algorithms found to be more effective than the k-NN algorithm.

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