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Network Classification For Traffic Management Anomaly Detection Feature Selection Clustering And Classification Computing And Networks Zahir Tari

  • SKU: BELL-32931538
Network Classification For Traffic Management Anomaly Detection Feature Selection Clustering And Classification Computing And Networks Zahir Tari
$ 31.00 $ 45.00 (-31%)

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Network Classification For Traffic Management Anomaly Detection Feature Selection Clustering And Classification Computing And Networks Zahir Tari instant download after payment.

Publisher: Institution of Engineering and Technology
File Extension: PDF
File size: 3.8 MB
Pages: 288
Author: Zahir Tari, Adil Fahad, Abdulmohsen Almalawi, Xun Yi
ISBN: 9781785619212, 1785619217
Language: English
Year: 2020

Product desciption

Network Classification For Traffic Management Anomaly Detection Feature Selection Clustering And Classification Computing And Networks Zahir Tari by Zahir Tari, Adil Fahad, Abdulmohsen Almalawi, Xun Yi 9781785619212, 1785619217 instant download after payment.

With the massive increase of data and traffic on the Internet within the 5G, IoT and smart cities frameworks, current network classification and analysis techniques are falling short. Novel approaches using machine learning algorithms are needed to cope with and manage real-world network traffic, including supervised, semi-supervised, and unsupervised classification techniques. Accurate and effective classification of network traffic will lead to better quality of service and more secure and manageable networks.

This authored book investigates network traffic classification solutions by proposing transport-layer methods to achieve better run and operated enterprise-scale networks. The authors explore novel methods for enhancing network statistics at the transport layer, helping to identify optimal feature selection through a global optimization approach and providing automatic labelling for raw traffic through a SemTra framework to maintain provable privacy on information disclosure properties.

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