A Robust Network Application Algorithm Based on the Framework of Nearest Prototype
نویسندگان
چکیده
Network traffic is the key predicament and has gained much importance in the field of networking. This paper primarily discusses the two clustering methods used in the analysis of the network traffic. A comprehensive data processing is performed and application profiles are produced and consecutively clusters from the network traffic data, stating the similarities between different applications, which in turn are used to manage the network resources. This paper predominantly contemplates with enhanced Nearest Prototype (NP) classification algorithm.
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