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One Class Support Vector Machines for Detecting Anomalous Windows Registry Accesses

机译:一类用于检测异常Windows注册表访问的支持向量机

摘要

We present a new Host-based Intrusion Detection System (IDS) that monitors accesses to the Microsoft Windows Registry using Registry Anomaly Detection (RAD). Our system uses a one class Support Vector Machine (OCSVM) to detect anomalous registry behavior by training on a dataset of normal registry accesses. It then uses this model to detect outliers in new (unclassified) data generated from the same system. Given the success of OCSVMs in other applications, we apply them to the Windows Registry anomaly detection problem. We compare our system to the RAD system using the Probabilistic Anomaly Detection (PAD) algorithm on the same dataset. Surprisingly, we find that PAD outperforms our OCSVM system due to properties of the hierarchical prior incorporated in the PAD algorithm. In the future, these properties may be used to develop an improved kernel and increase the performance of the OCSVM system.
机译:我们提出了一个新的基于主机的入侵检测系统(IDS),该系统使用注册表异常检测(RAD)监视对Microsoft Windows注册表的访问。我们的系统使用一类支持向量机(OCSVM)通过对正常注册表访问的数据集进行训练来检测异常的注册表行为。然后,它使用此模型来检测从同一系统生成的新(未分类)数据中的异常值。考虑到OCSVM在其他应用程序中的成功,我们将它们应用于Windows注册表异常检测问题。我们使用同一数据集上的概率异常检测(PAD)算法将我们的系统与RAD系统进行比较。出乎意料的是,由于PAD算法中包含的分层先验的属性,我们发现PAD的性能优于OCSVM系统。将来,这些属性可能会用于开发改进的内核并提高OCSVM系统的性能。

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