Abstract. Packet header traces are widely used in network analysis. Header traces are the aggregate of traffic from many concurrent applications. We present a methodology, based on machine learning, that can break the trace down into clusters of traffic where each cluster has different traffic characteristics. Typical clusters include bulk transfer, single and multiple transactions and interactive traffic, amongst others. The paper includes a description of the methodology, a visualisation of the attribute statistics that aids in recognising cluster types and a discussion of the stability and effectiveness of the methodology.
Statistics-based Internet traffic classification using machine learning techniques has attracted ext...
The dynamic classification and identification of network applications responsible for network traffi...
The dynamic classification and identification of network applications responsible for network traffi...
Packet header traces are widely used in network analysis. Header traces are the aggregate of traffic...
Due to the limitations of the traditional port-based and payload-based traffic classification approa...
Network traffic classification is an essential component for network management and security systems...
Abstract—In this paper, we propose a novel framework for traffic classification that employs machine...
International audienceRecent development in smart devices has lead us to an explosion in data genera...
International audienceRecent development in smart devices has lead us to an explosion in data genera...
We introduce a Bayesian nonparametric method for the clustering of network flows, sequences of packe...
Abstract—Many research efforts propose the use of flow-level features (e.g., packet sizes and inter-...
Abstract—Traffic classification has become a crucial domain of research due to the rise in applicati...
Abstract—Identifying applications and classifying network traffic flows according to their source ap...
We address the problem of classifying Internet packet flows according to the application level proto...
There is significant interest in the data mining and network management communities about the need t...
Statistics-based Internet traffic classification using machine learning techniques has attracted ext...
The dynamic classification and identification of network applications responsible for network traffi...
The dynamic classification and identification of network applications responsible for network traffi...
Packet header traces are widely used in network analysis. Header traces are the aggregate of traffic...
Due to the limitations of the traditional port-based and payload-based traffic classification approa...
Network traffic classification is an essential component for network management and security systems...
Abstract—In this paper, we propose a novel framework for traffic classification that employs machine...
International audienceRecent development in smart devices has lead us to an explosion in data genera...
International audienceRecent development in smart devices has lead us to an explosion in data genera...
We introduce a Bayesian nonparametric method for the clustering of network flows, sequences of packe...
Abstract—Many research efforts propose the use of flow-level features (e.g., packet sizes and inter-...
Abstract—Traffic classification has become a crucial domain of research due to the rise in applicati...
Abstract—Identifying applications and classifying network traffic flows according to their source ap...
We address the problem of classifying Internet packet flows according to the application level proto...
There is significant interest in the data mining and network management communities about the need t...
Statistics-based Internet traffic classification using machine learning techniques has attracted ext...
The dynamic classification and identification of network applications responsible for network traffi...
The dynamic classification and identification of network applications responsible for network traffi...