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Adaptive framework for network traffic classification using dimensionality reduction and clustering

机译:使用维数减少和聚类网络流量分类的自适应框架

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摘要

Information security has become a very important topic especially during the last years. Web services are becoming more complex and dynamic. This offers new possibilities for attackers to exploit vulnerabilities by inputting malicious queries or code. However, these attack attempts are often recorded in server logs. Analyzing these logs could be a way to detect intrusions either periodically or in real time. We propose a framework that preprocesses and analyzes these log files. HTTP queries are transformed to numerical matrices using n-gram analysis. The dimensionality of these matrices is reduced using principal component analysis and diffusion map methodology. Abnormal log lines can then be analyzed in more detail. We expand our previous work by elaborating the cluster analysis after obtaining the low-dimensional representation. The framework was tested with actual server log data collected from a large web service. Several previously unknown intrusions were found. Proposed methods could be customized to analyze any kind of log data. The system could be used as a real-time anomaly detection system in any network where sufficient data is available.
机译:信息安全已成为特别重要的话题,特别是在过去几年中。 Web服务正在变得更加复杂和动态。这为攻击者提供了通过输入恶意查询或代码来利用漏洞的新可能性。但是,这些攻击尝试通常在服务器日志中记录。分析这些日志可能是一种定期或实时检测入侵的方法。我们提出了一个框架,它预处理并分析了这些日志文件。使用N-GRAM分析将HTTP查询转换为数字矩阵。使用主成分分析和扩散图方法减少了这些矩阵的维度。然后可以更详细地分析异常的日志线。我们通过在获得低维表示后阐述群集分析来扩展我们以前的工作。使用从大型Web服务收集的实际服务器日志数据进行测试。发现了几个先前的未知入侵。可以自定义建议的方法来分析任何类型的日志数据。该系统可以在任何网络中用作实时异常检测系统,其中有足够的数据。

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