Visualisation of network forensics traffic data with a self-organising map for qualitative features

E. Palomo, John North, D. Elizondo, Rafael Marcos Luque Baena, Tim Watson
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引用次数: 19

Abstract

Digital crimes are a part of modern life but evidence of these crimes can be captured in network traffic data logs. Analysing these logs is a difficult process, this is especially true as the format that different attacks can take can vary tremendously and may be unknown at the time of the analysis. The main objective of the field of network forensics consists of gathering evidence of illegal acts from a networking infrastructure. Therefore, software tools, and techniques, that can help with these digital investigations are in great demand. In this paper, an approach to analysing and visualising network traffic data based upon the use of self-organising maps (SOM) is presented. The self-organising map has been widely used in clustering tasks in the literature; it can enable network clusters to be created and visualised in a manner that makes them immediately more intuitive and understandable and can be performed on high-dimensional input data, transforming this into a much lower dimensional space. In order to show the usefulness of this approach, the self-organising map has been applied to traffic data, for use as a tool in network forensics. Moreover, the proposed SOM takes into account the qualitative features that are present in the traffic data, in addition to the quantitative features. The traffic data was was clustered and visualised and the results were then analysed. The results demonstrate that this technique can be used to aid in the comprehension of digital forensics and to facilitate the search for anomalous behaviour in the network environment.
可视化的网络取证流量数据与自组织地图定性特征
数字犯罪是现代生活的一部分,但这些犯罪的证据可以在网络流量数据日志中捕捉到。分析这些日志是一个困难的过程,特别是不同的攻击可能采用的格式差异很大,并且在分析时可能是未知的。网络取证领域的主要目标包括从网络基础设施中收集非法行为的证据。因此,能够帮助进行这些数字调查的软件工具和技术需求量很大。本文提出了一种基于自组织映射(SOM)的网络流量数据分析和可视化方法。在文献中,自组织映射被广泛应用于聚类任务;它可以创建和可视化网络集群,使它们立即更加直观和可理解,并且可以在高维输入数据上执行,将其转换为低维空间。为了展示这种方法的实用性,自组织地图被应用于交通数据,作为网络取证的工具。此外,除了定量特征外,所提出的SOM还考虑了交通数据中存在的定性特征。对交通数据进行聚类和可视化,然后对结果进行分析。结果表明,该技术可用于帮助理解数字取证,并促进网络环境中异常行为的搜索。
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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