ProfilIoT

Published: Apr 3, 2017
Abstract
In this work we apply machine learning algorithms on network traffic data for accurate identification of IoT devices connected to a network. To train and evaluate the classifier, we collected and labeled network traffic data from nine distinct IoT devices, and PCs and smartphones. Using supervised learning, we trained a multi-stage meta classifier; in the first stage, the classifier can distinguish between traffic generated by IoT and non-IoT...
Paper Details
Title
ProfilIoT
Published Date
Apr 3, 2017
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