对攻击数据进行统计分析,区分攻击

M. Cukier, R. Berthier, S. Panjwani, Stephanie Tan
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引用次数: 33

摘要

本文分析了从试验台收集的恶意活动,该试验台由两台专门用于攻击目的的目标计算机组成,历时109天。我们将端口扫描、ICMP扫描和漏洞扫描与恶意活动分离开来。在剩余的攻击数据中,超过78%(即3,677次)的攻击目标是445端口,然后对其进行统计分析。目标是找到最有效地区分攻击的特征。首先,我们通过分析它们的信息来区分攻击。然后使用K-Means算法通过聚类特征对攻击进行分离。消息分析结果与K-Means算法结果的对比表明,1)数据包、字节数和消息长度随时间分布的平均值是区分攻击的较差特征,2)字节数、字节数分布的平均值和消息长度作为数据包数的函数是区分攻击的最佳特征
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Statistical Analysis of Attack Data to Separate Attacks
This paper analyzes malicious activity collected from a test-bed, consisting of two target computers dedicated solely to the purpose of being attacked, over a 109 day time period. We separated port scans, ICMP scans, and vulnerability scans from the malicious activity. In the remaining attack data, over 78% (i.e., 3,677 attacks) targeted port 445, which was then statistically analyzed. The goal was to find the characteristics that most efficiently separate the attacks. First, we separated the attacks by analyzing their messages. Then we separated the attacks by clustering characteristics using the K-Means algorithm. The comparison between the analysis of the messages and the outcome of the K-Means algorithm showed that 1) the mean of the distributions of packets, bytes and message lengths over time are poor characteristics to separate attacks and 2) the number of bytes, the mean of the distribution of bytes and message lengths as a function of the number packets are the best characteristics for separating attacks
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