首页> 外文会议>Multimedia Information Networking and Security, 2009. MINES '09 >Discovering Host Anomalies in Multi-source Information
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Discovering Host Anomalies in Multi-source Information

机译:在多源信息中发现主机异常

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Anomaly detection means developing a reference profile of normal activity and comparing the ongoing activity against it. Anomaly detection is very promising because of its potential to detect unseen types of attacks. In this paper we present our preliminary research on host anomaly detection by fusing multi-source security information. We selected five types of information which may be good indicators of host anomalies. They are RAM usage, host network connections, usage of bandwidth, the alert of antivirus and the alert of our own project SATA. In the information fusion framework, the D-S evidence theory was used to fuse the dynamic host-related information. Some improvements are also discussed. We also use real-world environment to demonstrate the method's capability for detecting host anomaly. We show that our prototype can successfully detect most of anomalies caused by DOS, scanning and other attacks.
机译:异常检测是指开发正常活动的参考配置文件,并将正在进行的活动与其进行比较。异常检测非常有希望,因为它有可能检测到看不见的攻击类型。在本文中,我们介绍了通过融合多源安全信息进行主机异常检测的初步研究。我们选择了五种类型的信息,这些信息可以很好地指示主机异常。它们是RAM使用率,主机网络连接,带宽使用率,防病毒警报以及我们自己的项目SATA警报。在信息融合框架中,使用D-S证据理论融合动态主机相关信息。还讨论了一些改进。我们还使用实际环境来演示该方法检测主机异常的能力。我们证明了我们的原型可以成功检测到大多数由DOS,扫描和其他攻击引起的异常。

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