A lightweight network anomaly detection technique

Jinoh Kim, Wucherl Yoo, A. Sim, S. Suh, Ikkyun Kim
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引用次数: 8

Abstract

While the network anomaly detection is essential in network operations and management, it becomes further challenging to perform the first line of detection against the exponentially increasing volume of network traffic. In this work, we develop a technique for the first line of online anomaly detection with two important considerations: (i) availability of traffic attributes during the monitoring time, and (ii) computational scalability for streaming data. The presented learning technique is lightweight and highly scalable with the beauty of approximation based on the grid partitioning of the given dimensional space. With the public traffic traces of KDD Cup 1999 and NSL-KDD, we show that our technique yields 98.5% and 83% of detection accuracy, respectively, only with a couple of readily available traffic attributes that can be obtained without the help of post-processing. The results are at least comparable with the classical learning methods including decision tree and random forest, with approximately two orders of magnitude faster learning performance.
一个轻量级的网络异常检测技术
网络异常检测在网络运营和管理中发挥着重要的作用,但随着网络流量的急剧增长,如何进行第一道检测变得越来越具有挑战性。在这项工作中,我们开发了一种在线异常检测的一线技术,考虑了两个重要因素:(i)监测期间流量属性的可用性,以及(ii)流数据的计算可扩展性。所提出的学习技术具有轻量级和高度可扩展性,并且具有基于给定维度空间的网格划分的近似之美。以1999年KDD杯和NSL-KDD的公共流量轨迹为例,我们的技术分别获得了98.5%和83%的检测准确率,仅使用几个现成的流量属性,这些属性可以在没有后处理的帮助下获得。结果至少与经典的学习方法(包括决策树和随机森林)相当,学习性能提高了大约两个数量级。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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