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Efficient Attack Detection in IoT Devices using Feature Engineering-Less Machine Learning

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Author :  Arshiya Khan and Chase Cotton

Affiliation :  University of Delaware, Newark, USA

Country :  USA

Category :  Computer Science & Information Technology

Volume, Issue, Month, Year :  14, 6, December, 2022

Abstract :


Through the generalization of deep learning, the research community has addressed critical challenges in the network security domain, like malware identification and anomaly detection. However, they have yet to discuss deploying them on Internet of Things (IoT) devices for day-to-day perations. IoT devices are often limited in memory and processing power, rendering the compute-intensive deep learning environment unusable. This research proposes a way to overcome this barrier by bypassing feature engineering in the deep learning pipeline and using raw packet data as input. We introduce a feature- engineering-less machine learning (ML) process to perform malware detection on IoT devices. Our proposed model,” Feature engineering-less ML (FEL-ML),” is a lighter-weight detection algorithm that expends no extra computations on “engineered” features. It effectively accelerates the low-powered IoT edge. It is trained on unprocessed byte-streams of packets. Aside from providing better results, it is quicker than traditional feature-based methods. FEL-ML facilitates resource-sensitive network traffic ecurity with the added benefit of eliminating the significant investment by subject matter experts in feature engineering.

Keyword :  Feature engineering-less, AI-enabled security, 1D-CNN, Internet-of-Things, Botnet Attack

Journal/ Proceedings Name :  International Journal of Computer Science & Information Technology (IJCSIT)

URL :  https://aircconline.com/ijcsit/V14N6/14622ijcsit05.pdf

User Name : Selina
Posted 25-01-2023 on 15:02:24 AEDT



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