Feb. 8, 2024, 5:10 a.m. | Mei Liu Leon Yang

cs.CR updates on arXiv.org arxiv.org

As IoT networks become more complex and generate massive amounts of dynamic data, it is difficult to monitor and detect anomalies using traditional statistical methods and machine learning methods. Deep learning algorithms can process and learn from large amounts of data and can also be trained using unsupervised learning techniques, meaning they don't require labelled data to detect anomalies. This makes it possible to detect new and unknown anomalies that may not have been detected before. Also, deep learning algorithms …

algorithms analysis can cs.cr cs.lg cs.ni data deep learning detect don dynamic iot iot network large learn machine machine learning monitor network networks network traffic network traffic analysis process techniques traffic traffic analysis unsupervised learning

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