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Aggregating vulnerability metrics in enterprise networks using attack graphs

机译:使用攻击图聚合企业网络中的漏洞指标

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Quantifying security risk is an important and yet difficult task in enterprise network security management. While metrics exist for individual software vulnerabilities, there is currently no standard way of aggregating such metrics. We present a model that can be used to aggregate vulnerability metrics in an enterprise network, producing quantitative metrics that measure the likelihood breaches can occur within a given network configuration. A clear semantic model for this aggregation is an important first step toward a comprehensive network security metric model. We utilize existing work in attack graphs and apply probabilistic reasoning to produce an aggregation that has clear semantics and sound computation. We ensure that shared dependencies between attack paths have a proportional effect on the final calculation. We correctly reason over cycles, ensuring that privileges are evaluated without any self-referencing effect. We introduce additional modeling artifacts in our probabilistic graphical model to capture and account for hidden correlations among exploit steps. The paper shows that a clear semantic model for aggregation is critical in interpreting the results, calibrating the metric model, and explaining insights gained from empirical evaluation. Our approach has been rigorously evaluated using a number of network models, as well as data from production systems.
机译:量化安全风险是企业网络安全管理中一项重要而又艰巨的任务。尽管存在针对各个软件漏洞的指标,但目前尚无标准的方法来汇总此类指标。我们提出了一个模型,该模型可用于汇总企业网络中的漏洞指标,生成量化指标,以衡量在给定网络配置中可能发生的违规行为。针对这种聚合的清晰语义模型是迈向全面网络安全度量模型的重要的第一步。我们利用攻击图中的现有工作并应用概率推理来产生具有清晰语义和合理计算的汇总。我们确保攻击路径之间的共享依赖性对最终计算具有成比例的影响。我们会按周期正确地进行推理,以确保对特权进行评估而不会产生任何自引用效应。我们在概率图形模型中引入了其他建模工件,以捕获并说明利用步骤之间的隐蔽关联。该论文表明,清晰的聚合语义模型对于解释结果,校准度量模型以及解释从经验评估中获得的见解至关重要。我们使用多种网络模型以及生产系统中的数据对我们的方法进行了严格的评估。

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