P2P Traffic Identification Based on Host and Flow Behaviour Characteristics
نویسندگان
چکیده
Peer-to-Peer (P2P) networks have been widely applied in file sharing, streaming media, instant messaging and other fields, which have attracted large attention. At the same time P2P networks traffic worsens the congestion of a network significantly. In order to better manage and control P2P traffic, it is important to identify P2P traffic accurately. In this paper we propose a novel P2P identification scheme, based on the host and flow behaviour characteristics of P2P traffic. First we determine if a host takes part in a P2P application by matching its behaviour with some predefined host level behaviour rules. Subsequently, we refine the identification by comparing the statistical features of each flow in the host with several flow feature profiles. The experiments on real world network data prove that this method is quite efficient to identify P2P traffic. The classification accuracy achieves 93.9 % and 96.3 % in terms of flows and bytes respectively.
منابع مشابه
HFBP: Identifying P2P Traffic by Host Level and Flow Level Behavior Profiles
Recently, Peer-to-peer (P2P) networks have been widely applied in streaming media, instant messaging, file sharing and other fields, which have occupied more and more network bandwidth. Accurately identify P2P traffic is very important to management and control P2P traffic. In this paper, we introduce HFBP, a novel P2P identification scheme based on the host level and flow level behavior profil...
متن کاملA Novel P2P Traffic Identification Model Based on Ensemble Learning
Peer-to-peer (P2P) traffic has occupied major fraction of all internet traffic. Hence, P2P flow identification becomes an important problem for network management. In our work, we propose an ensemble classification approach for P2P traffic identification, which integrates six DTNB(combination of naive Bayes and decision tables) algorithm and dynamic weighted integration method. The proposed P2P...
متن کاملIdentify P2P Traffic by Inspecting Data Transfer Behaviour
Classifying network traffic according to its applications is important to a broad range of network areas. Since new applications, especially P2P applications, no longer use well-known fixed port numbers, the native port based traffic classification technique has become much less effective. In this paper, we propose a novel approach to identify P2P traffic by leveraging on the data transfer beha...
متن کاملClassification of P2P and HTTP Using Specific Protocol Characteristics
A key aspect of traffic classification is the early identification of individual flows which may utilise strategies such as ephemeral ports and transport later encryption to ‘hide’ on the network. This paper focuses on P2P and HTTP – the two main producers of network traffic – to determine the characteristics of their individual flows. We propose a heuristic based classification system to disti...
متن کاملIdentification and Analysis of Peer-to-Peer Traffic
Recent measurement studies report that a significant portion of Internet traffic is unknown. It is very likely that the majority of the unidentified traffic originates from peer-to-peer (P2P) applications. However, traditional techniques to identify P2P traffic seem to fail since these applications usually disguise their existence by using arbitrary ports. In addition to the identification of a...
متن کامل