基于流量的智能采样有效的网络异常检测

G. Androulidakis, S. Papavassiliou
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引用次数: 16

摘要

采样已经成为可扩展的互联网流量监控和异常检测的重要组成部分。在本文中,重点放在评估使用智能流采样技术对异常检测过程的影响。基于小流量通常是许多网络攻击(DDoS,端口扫描,蠕虫传播)的来源的观察,我们首先引入了一种新的流量采样方法,该方法侧重于小流量的选择,从而提高了异常检测的有效性,同时减少了选择的流量数量。通过采用顺序非参数变点检测异常检测方法对实际运行的大学校园网采集的实际数据进行分析和应用,实现了基于智能流的采样对异常检测过程影响的性能评价。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intelligent Flow-Based Sampling for Effective Network Anomaly Detection
Sampling has become an essential component of scalable Internet traffic monitoring and anomaly detection. In this paper, the emphasis is placed on the evaluation of the impact of using intelligent flow sampling techniques on the anomaly detection process. Based on the observation that small flows are usually the source of many network attacks (DDoS, portscans, worm propagation) we first introduce a new flow sampling methodology that focuses on the selection of small flows and achieves to improve anomaly detection effectiveness, while at the same time reduces the number of selected flows. The performance evaluation of the impact of intelligent flow-based sampling on the anomaly detection process is achieved through the adoption and application of a sequential non-parametric Change-Point Detection anomaly detection method on realistic data that have been collected from a real operational university campus network.
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