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Network-wide anomaly detection via the Dirichlet process

机译:通过Dirichlet过程进行网络宽异常检测

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Statistical anomaly detection techniques provide the next layer of cyber-security defences below traditional signature-based approaches. This article presents a scalable, principled, probability-based technique for detecting outlying connectivity behaviour within a directed interaction network such as a computer network. Independent Bayesian statistical models are fit to each message recipient in the network using the Dirichlet process, which provides a tractable, conjugate prior distribution for an unknown discrete probability distribution. The method is shown to successfully detect a red team attack in authentication data obtained from the enterprise network of Los Alamos National Laboratory.
机译:统计异常检测技术提供了下一层网络安全防御,低于传统的基于签名的方法。本文介绍了一种可扩展,原则性的基于概率的技术,用于检测诸如计算机网络的定向交互网络内的广泛连接行为。独立的贝叶斯统计模型使用Dirichlet方法适合网络中的每个消息接收者,该方法提供了用于未知离散概率分布的易于的缀合物的先前分布。该方法显示在从Los Alamos National实验室的企业网络中获得的认证数据中成功检测了红色团队攻击。

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