Literature on the use of machine learning (ML) algorithms for classifying IP traffic has demonstrated potential to be deployed in real-world IP networks. The key challenges of timely and continuous classification are addressed in [1], in which multiple short sub-flows taken at different points within the original application's flow lifetime are used to train the classifier. The classification decision process is repeated continuously using a sliding window of the flow's most recent N packets. The work left a critical question of how to automate the identification of appropriate sub-flows for training. In this paper we propose a novel approach for sub-flows identification and selection using ML clustering algorithms. We evaluate our approach...
Traffic classification utilizing flow measurement enables operators to perform essential network man...
Abstract—Many research efforts propose the use of flow-level features (e.g., packet sizes and inter-...
Statistics-based Internet traffic classification using machine learning techniques has attracted ext...
Literature on the use of machine learning (ML) algorithms for classifying IP traffic has relied on f...
Machine Learning (ML) for classifying IP traffic has relied on the analysis of statistics of full fl...
Machine Learning (ML) for classifying IP traffic has relied on the analysis of statistics of full fl...
algorithms for classifying IP traffic has relied on bi-directional full-flow statistics while assumi...
Literature on the use of Machine Learning (ML) algorithms for classifying IP traffic has relied on b...
Machine Learning (ML) classifiers have been shown to provide accurate, timely and continuous IP flow...
A number of key areas in IP network engineering, management and surveillance greatly benefit from th...
A number of key areas in IP network engineering, management and surveillance greatly benefit from th...
The research community has begun looking for IP traffic classification techniques that do not rely o...
The task of network management and monitoring relies on an accurate characterization of network traf...
The dynamic classification and identification of network applications responsible for network traffi...
The dynamic classification and identification of network applications responsible for network traffi...
Traffic classification utilizing flow measurement enables operators to perform essential network man...
Abstract—Many research efforts propose the use of flow-level features (e.g., packet sizes and inter-...
Statistics-based Internet traffic classification using machine learning techniques has attracted ext...
Literature on the use of machine learning (ML) algorithms for classifying IP traffic has relied on f...
Machine Learning (ML) for classifying IP traffic has relied on the analysis of statistics of full fl...
Machine Learning (ML) for classifying IP traffic has relied on the analysis of statistics of full fl...
algorithms for classifying IP traffic has relied on bi-directional full-flow statistics while assumi...
Literature on the use of Machine Learning (ML) algorithms for classifying IP traffic has relied on b...
Machine Learning (ML) classifiers have been shown to provide accurate, timely and continuous IP flow...
A number of key areas in IP network engineering, management and surveillance greatly benefit from th...
A number of key areas in IP network engineering, management and surveillance greatly benefit from th...
The research community has begun looking for IP traffic classification techniques that do not rely o...
The task of network management and monitoring relies on an accurate characterization of network traf...
The dynamic classification and identification of network applications responsible for network traffi...
The dynamic classification and identification of network applications responsible for network traffi...
Traffic classification utilizing flow measurement enables operators to perform essential network man...
Abstract—Many research efforts propose the use of flow-level features (e.g., packet sizes and inter-...
Statistics-based Internet traffic classification using machine learning techniques has attracted ext...