International audienceNetwork-traffic data commonly arrives in the form of fast data streams; online network-monitoring systems continuously analyze these kinds of streams, sequentially collecting measurements over time. Continuous and dynamic learning is an effective learning strategy when operating in these fast and dynamic environments, where concept drifts constantly occur. In this paper, we propose different approaches for stream-based machine learning, able to analyze network-traffic streams on the fly, using supervised learning techniques. We address two major challenges associated to stream-based machine learning and online network monitoring: (i) how to dynamically learn from and adapt to non-stationary data and patterns changing o...
Kernel-based active learning strategies were studied for the optimization of environmental monitorin...
In the field of network security, the process of labeling a network traffic dataset is specially exp...
Online active learning is a paradigm in machine learning that aims to select the most informative da...
International audienceNetwork-traffic data commonly arrives in the form of fast data streams; online...
International audienceNetwork-traffic data usually arrives in the form of a data stream. Online moni...
International audienceContinuous, dynamic and short-term learning is an effective learning strategy ...
We make a case for in-network Continual Learning as a solution for seamless adaptation to evolving n...
With machine learning and especially deep learning rising to prevalence in many domains such as comp...
Mining high-speed data streams has become an important topic due to the rapid growth of online data....
Recent network traffic classification methods benefit from machine learning (ML) technology. However...
International audienceNowadays, Machine Learning (ML) tools are commonly used in every area of scien...
Adaptive techniques based on machine learning and data mining are gaining relevance in self-manageme...
Abstract — Adaptive techniques based on machine learning and data mining are gaining relevance in se...
Adaptive techniques based on machine learning and data mining are gaining relevance in self-manageme...
There is an emerging need for predictive models to be trained on-the-fly, since in numerous machine ...
Kernel-based active learning strategies were studied for the optimization of environmental monitorin...
In the field of network security, the process of labeling a network traffic dataset is specially exp...
Online active learning is a paradigm in machine learning that aims to select the most informative da...
International audienceNetwork-traffic data commonly arrives in the form of fast data streams; online...
International audienceNetwork-traffic data usually arrives in the form of a data stream. Online moni...
International audienceContinuous, dynamic and short-term learning is an effective learning strategy ...
We make a case for in-network Continual Learning as a solution for seamless adaptation to evolving n...
With machine learning and especially deep learning rising to prevalence in many domains such as comp...
Mining high-speed data streams has become an important topic due to the rapid growth of online data....
Recent network traffic classification methods benefit from machine learning (ML) technology. However...
International audienceNowadays, Machine Learning (ML) tools are commonly used in every area of scien...
Adaptive techniques based on machine learning and data mining are gaining relevance in self-manageme...
Abstract — Adaptive techniques based on machine learning and data mining are gaining relevance in se...
Adaptive techniques based on machine learning and data mining are gaining relevance in self-manageme...
There is an emerging need for predictive models to be trained on-the-fly, since in numerous machine ...
Kernel-based active learning strategies were studied for the optimization of environmental monitorin...
In the field of network security, the process of labeling a network traffic dataset is specially exp...
Online active learning is a paradigm in machine learning that aims to select the most informative da...