Network traffic classification is an essential component for network management and security systems. To address the limitations of traditional port-based and payload-based methods, recent studies have been focusing on alternative approaches. One promising direction is applying machine learning techniques to classify traffic flows based on packet and flow level statistics. In particular, previous papers have illustrated that clustering can achieve high accuracy and discover unknown application classes. In this work, we present a novel semi-supervised learning method using constrained clustering algorithms. The motivation is that in network domain a lot of background information is available in addition to the data instances themselves. For ...
We introduce a Bayesian nonparametric method for the clustering of network flows, sequences of packe...
Identification of network traffic is crucial in network management and monitoring purposes. Nowadays...
Abstract—Many research efforts propose the use of flow-level features (e.g., packet sizes and inter-...
Due to the limitations of the traditional port-based and payload-based traffic classification approa...
Statistics-based Internet traffic classification using machine learning techniques has attracted ext...
Internet traffic classification is a critical and essential functionality for network management and...
Abstract. Packet header traces are widely used in network analysis. Header traces are the aggregate ...
Network traffic classification is basic tool for internet service providers, various government and ...
This paper presents a new semi-supervised method to effectively improve traffic classification perfo...
Network traffic classification is an essential component for service differentiation, network design...
This paper presents a new semi-supervised method to effectively improve traffic classification perfo...
This paper presents a new semi-supervised method to effectively improve traffic classification perfo...
traffic classification, semi-supervised learning, clustering Identifying and categorizing network tr...
Abstract—In this paper, we propose a novel framework for traffic classification that employs machine...
Packet header traces are widely used in network analysis. Header traces are the aggregate of traffic...
We introduce a Bayesian nonparametric method for the clustering of network flows, sequences of packe...
Identification of network traffic is crucial in network management and monitoring purposes. Nowadays...
Abstract—Many research efforts propose the use of flow-level features (e.g., packet sizes and inter-...
Due to the limitations of the traditional port-based and payload-based traffic classification approa...
Statistics-based Internet traffic classification using machine learning techniques has attracted ext...
Internet traffic classification is a critical and essential functionality for network management and...
Abstract. Packet header traces are widely used in network analysis. Header traces are the aggregate ...
Network traffic classification is basic tool for internet service providers, various government and ...
This paper presents a new semi-supervised method to effectively improve traffic classification perfo...
Network traffic classification is an essential component for service differentiation, network design...
This paper presents a new semi-supervised method to effectively improve traffic classification perfo...
This paper presents a new semi-supervised method to effectively improve traffic classification perfo...
traffic classification, semi-supervised learning, clustering Identifying and categorizing network tr...
Abstract—In this paper, we propose a novel framework for traffic classification that employs machine...
Packet header traces are widely used in network analysis. Header traces are the aggregate of traffic...
We introduce a Bayesian nonparametric method for the clustering of network flows, sequences of packe...
Identification of network traffic is crucial in network management and monitoring purposes. Nowadays...
Abstract—Many research efforts propose the use of flow-level features (e.g., packet sizes and inter-...