The task of network traffic monitoring has evolved drastically with the ever-increasing amount of data flowing in large scale networks. The automated analysis of this tremendous source of information often comes with using simpler models on aggregated data (e.g. IP flow records) due to time and space constraints. A step towards utilizing IP flow records more effectively are stream learning techniques. We propose a method to collect a limited yet relevant amount of data in order to learn a class of complex models, finite state machines, in real-time. These machines are used as communication profiles to fingerprint, identify or classify hosts and services and offer high detection rates while requiring less training data and thus being faster ...
Machine Learning (ML) for classifying IP traffic has relied on the analysis of statistics of full fl...
Accurate classification of Internet traffic is of fundamental importance for network management appl...
algorithms for classifying IP traffic has relied on bi-directional full-flow statistics while assumi...
The task of network traffic monitoring has evolved drastically with the ever-increasing amount of da...
Literature on the use of machine learning (ML) algorithms for classifying IP traffic has relied on f...
Being able to model behavior described by a linear sequence of observations (such as log files) goes...
Literature on the use of machine learning (ML) algorithms for classifying IP traffic has demonstrate...
Obfuscated and encrypted protocols hinder traffic classification by classical techniques such as por...
To manage and monitor their networks in a proper way, network operators are often interested in id...
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...
There is widespread interest in the research community for new IP traffic classification techniques,...
Obfuscated and encrypted protocols hinder traffic classification by classical techniques such as po...
Since its inception until today, the Internet has been in constant transformation. The analysis and ...
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...
Accurate classification of Internet traffic is of fundamental importance for network management appl...
algorithms for classifying IP traffic has relied on bi-directional full-flow statistics while assumi...
The task of network traffic monitoring has evolved drastically with the ever-increasing amount of da...
Literature on the use of machine learning (ML) algorithms for classifying IP traffic has relied on f...
Being able to model behavior described by a linear sequence of observations (such as log files) goes...
Literature on the use of machine learning (ML) algorithms for classifying IP traffic has demonstrate...
Obfuscated and encrypted protocols hinder traffic classification by classical techniques such as por...
To manage and monitor their networks in a proper way, network operators are often interested in id...
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...
There is widespread interest in the research community for new IP traffic classification techniques,...
Obfuscated and encrypted protocols hinder traffic classification by classical techniques such as po...
Since its inception until today, the Internet has been in constant transformation. The analysis and ...
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...
Accurate classification of Internet traffic is of fundamental importance for network management appl...
algorithms for classifying IP traffic has relied on bi-directional full-flow statistics while assumi...