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Detecting Attacks on IoT Devices using Featureless 1D-CNN

Arshiya Khan, Chase Cotton

202119 citationsDOIOpen Access PDF

Abstract

The generalization of deep learning has helped us, in the past, address challenges such as malware identification and anomaly detection in the network security domain. However, as effective as it is, scarcity of memory and processing power makes it difficult to perform these tasks in Internet of Things (IoT) devices. This research finds an easy way out of this bottleneck by depreciating the need for feature engineering and subsequent processing in machine learning techniques. In this study, we introduce a Featureless machine learning process to perform anomaly detection. It uses unprocessed byte streams of packets as training data. Featureless machine learning enables a low cost and low memory time-series analysis of network traffic. It benefits from eliminating the significant investment in subject matter experts and the time required for feature engineering.

Topics & Concepts

Computer scienceBottleneckFeature (linguistics)ByteArtificial intelligenceMalwareNetwork packetIdentification (biology)Machine learningProcess (computing)Anomaly detectionDeep learningExtreme learning machineComputer securityFeature extractionPacket processingIntrusion detection systemGeneralizationVirtual machineSPARK (programming language)ObfuscationData miningThe InternetInternet of ThingsDeep packet inspectionNetwork securityReal-time computingPipeline (software)Supervised learningSupport vector machinePasswordEmbedded systemArtificial neural networkNetwork Security and Intrusion DetectionAnomaly Detection Techniques and ApplicationsInternet Traffic Analysis and Secure E-voting
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