从IP流记录中高效学习通信配置文件

Christian A. Hammerschmidt, Samuel Marchal, R. State, Gaetano Pellegrino, S. Verwer
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引用次数: 16

摘要

随着大规模网络中数据流量的不断增加,网络流量监控的任务也发生了巨大的变化。由于时间和空间的限制,对这些巨大信息源的自动分析通常使用更简单的聚合数据模型(例如IP流记录)。更有效地利用IP流记录的一个步骤是流学习技术。我们提出了一种方法来收集有限但相关的数据量,以便实时学习一类复杂的模型,有限状态机。这些机器被用作通信配置文件来识别、识别或分类主机和服务,并提供高检测率,同时需要更少的训练数据,因此比简单模型计算速度更快。
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Efficient Learning of Communication Profiles from IP Flow Records
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 to compute than simple models.
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