选取网络流量属性聚类构建通信配置文件

Olli Knuuti, Timo Seppälä, Teemu Alapaholuoma, J. Ylinen, P. Loula, P. Kumpulainen, Kimmo Hätönen
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引用次数: 3

摘要

大规模的IP网络对安全性提出了特殊的挑战。网络由大量具有各种流量行为的设备组成。入侵检测和监控机制的实现往往是无效的,或者需要大量的硬件和人力资源。在本文中,我们提出了一种通过从选定的网络属性中制作时间序列和集群来构建通信配置文件的方法。该方法可以在不知道网络设备的作用和网络拓扑的情况下,根据设备的流量行为将网络设备划分为不同的组。可以根据每个设备的配置文件为其分配最适当的入侵检测或监视机制。还可以通过检查设备从构造的概要文件集群到另一个概要文件集群的变化来监视设备行为的变化。不同配置文件之间的变化可以被认为是使用中的异常或常见变化。
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Constructing Communication Profiles by Clustering Selected Network Traffic Attributes
Large-scale IP networks cause special challenges to the security. The network consists of a large number of devices with a vast variety of traffic behavior. Implementation of the intrusion detection and monitoring mechanisms are often ineffective or require a lot of hardware and human resources. In this paper we present a methodology to construct communication profiles by making a time series and clusters from selected network attributes. Using the method we can divide the network devices into different groups by their traffic behavior even if we don’t know the role of each device or the network topology. Most appropriate intrusion detection or monitoring mechanisms can be assigned to each device according to its profile. It is also possible to monitor the changes in the devices’ behavior by inspecting their changes from constructed profile cluster to another. The changes between different profiles can be considered abnormal or common variation in the usage.
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