Recent Developments in ML Based Internet Traffic Classification

Prem Kumar

Abstract


The usage of the internet is playing an increasingly important role as communication and technology improve. As a result, the amount of data and internet traffic is growing at an exponential rate. As a result, accurately classifying this traffic is a high priority for researchers. The categorization of internet traffic is a widely used method of thwarting the information detection system. Machine learning techniques are the most often used despite the fact that many other approaches have been developed for efficiently classifying internet data as well. Researchers have used a variety of supervised and unsupervised machine learning approaches to try and address the categorization problem of internet traffic.

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