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A Hybrid Approach to Detect Traffic Anomalies in Large-Scale Data Networks

机译:大型数据网络中流量异常检测的混合方法

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We present our thoughts on the design of a novel hybrid system for detecting anomalous traffic in large-scale, policy-rich data networks. A key innovation in our approach is the combination of static configuration analysis and dynamic traffic analytics. More specifically, we will first develop abstractions and mathematical models to formally model the network and security configurations to statically check for violation of network-wide invariants, which are potential security vulnerabilities. We will then develop dynamic data analytic techniques to analyze traffic in real-time and detect anomalous traffic patterns that may be exploiting the security vulnerabilities in the network. The results from the static analysis will be used to assist and guide the dynamic traffic analytics to optimize resource allocation and minimize false positives.
机译:我们提出了设计新颖的混合系统的想法,该系统可用于在大型,策略丰富的数据网络中检测异常流量。我们方法的一项关键创新是静态配置分析和动态流量分析的结合。更具体地说,我们将首先开发抽象和数学模型,以对网络和安全配置进行正式建模,以静态检查是否存在潜在的安全漏洞网络范围内的不变性。然后,我们将开发动态数据分析技术,以实时分析流量并检测可能利用网络安全漏洞的异常流量模式。静态分析的结果将用于辅助和指导动态流量分析,以优化资源分配并最大程度减少误报。

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