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On the Effects of Learning Set Corruption in Anomaly-Based Detection of Web Defacements

机译:学习集腐败在基于异常的Web缺陷检测中的作用

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摘要

Anomaly detection is a commonly used approach for constructing intrusion detection systems. A key requirement is that the data used for building the resource profile are indeed attack-free, but this issue is often skipped or taken for granted. In this work we consider the problem of corruption in the learning data, with respect to a specific detection system, I.e., a web site integrity checker. We used corrupted learning sets and observed their impact on performance (in terms of false positives and false negatives). This analysis enabled us to gain important insights into this rather unexplored issue. Based on this analysis we also present a procedure for detecting whether a learning set is corrupted. We evaluated the performance of our proposal and obtained very good results up to a corruption rate close to 50%. Our experiments are based on collections of real data and consider three different flavors of anomaly detection.
机译:异常检测是构建入侵检测系统的常用方法。关键要求是,用于构建资源配置文件的数据确实没有攻击,但是此问题通常被跳过或视为理所当然。在这项工作中,我们针对特定的检测系统(即网站完整性检查器)考虑了学习数据损坏的问题。我们使用了损坏的学习集,并观察了它们对绩效的影响(就误报和误报而言)。这项分析使我们能够对这个尚未开发的问题获得重要的见解。基于此分析,我们还提出了一种检测学习集是否损坏的过程。我们评估了提案的效果,并获得了非常好的结果,腐败率高达50%。我们的实验基于真实数据的收集,并考虑了三种不同的异常检测方式。

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