在线网络测量中的大规模并行异常检测

S. Shanbhag, T. Wolf
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引用次数: 11

摘要

在网络运行过程中发现异常是网络管理和安全的一个重要方面。最近开发的高性能嵌入式处理系统允许实时流量监控和异常检测。在本文中,我们展示了如何使用这种处理能力在数千个不同的流量子类上并行运行几种不同的异常检测算法。这方面的主要挑战是管理和汇总这些流程生成的大量数据。我们提出(1)一种新的聚合过程,该过程使用现有算法中的连续异常信息(而不是二进制输出);(2)一种异常树表示来说明所有流量子类的状态。综合异常检测结果表明,该方法比任何单一异常检测算法的误报率和误报率都低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Massively Parallel Anomaly Detection in Online Network Measurement
Detecting anomalies during the operation of a network is an important aspect of network management and security. Recent development of high-performance embedded processing systems allow traffic monitoring and anomaly detection in real-time. In this paper, we show how such processing capabilities can be used to run several different anomaly detection algorithms in parallel on thousands of different traffic subclasses. The main challenge in this context is to manage and aggregate the vast amount of data generated by these processes. We propose (1) a novel aggregation process that uses continuous anomaly information (rather than binary outputs) from existing algorithms and (2) an anomaly tree representation to illustrate the state of all traffic subclasses. Aggregated anomaly detection results show a lower false positive and false negative rate than any single anomaly detection algorithm.
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