基于k-均值聚类挖掘网络流量的入侵检测

Lixin Wang, Jianhua Yang, Mary Mccormick, Pengyuan Wan, Xiaohua Xu
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引用次数: 2

摘要

互联网上的攻击者经常通过被攻破的主机(称为“踏脚石”)发起网络入侵,以减少被发现的机会。在踏脚石攻击中,攻击者使用Internet上的一系列主机作为中继机,并使用SSH等工具远程登录这些主机。一种有效的入侵检测方法是估计连接链的长度。本文提出了一种利用k均值聚类算法挖掘网络流量来检测踏脚石入侵的有效算法。我们提出的检测算法不需要捕获和处理大量的TCP数据包。利用本文提出的检测方法可以准确地确定连接链的长度。我们提出的检测算法比现有的基于连接链的入侵检测方法更有效,更容易实现。通过精心设计的网络实验,验证了我们提出的检测算法的有效性和正确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detect Stepping-stone Intrusion by Mining Network Traffic using k-Means Clustering
Attackers on the Internet often launch network intrusions through compromised hosts, called stepping-stones, in order to reduce the chance of being detected. In a stepping-stone attack, an attacker uses a chain of hosts on the Internet as relay machines and remotely login these hosts using tools such as SSH. An effective method to detect stepping-stone intrusion is to estimate the length of a connection chain. In this paper, we develop an efficient algorithm to detect stepping-stone intrusion by mining network traffic using the k-Means clustering algorithm. Our proposed detection algorithm does not require a large number of TCP packets to be captured and processed. The length of a connection chain can be accurately determined by using our proposed detection method. Our proposed detection algorithm is more efficient and easier to implement than all of the existing connection-chain based approaches for stepping-stone intrusion detection. The effectiveness and correctness of our proposed detection algorithm are verified through well-designed network experiments.
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