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Improving Attack Graph Visualization through Data Reduction and Attack Grouping

机译:通过数据减少和攻击分组改善攻击图的可视化

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Various tools exist to analyze enterprise network systems and to produce attack graphs detailing how attackers might penetrate into the system. These attack graphs, however, are often complex and difficult to comprehend fully, and a human user may find it problematic to reach appropriate configuration decisions. This paper presents methodologies that can 1) automatically identify portions of an attack graph that do not help a user to understand the core security problems and so can be trimmed, and 2) automatically group similar attack steps as virtual nodes in a model of the network topology, to immediately increase the under-standability of the data. We believe both methods are important steps toward improving visualization of attack graphs to make them more useful in configuration management for large enterprise networks. We implemented our methods using one of the existing attack-graph toolkits. Initial experimentation shows that the proposed approaches can 1) significantly reduce the complexity of attack graphs by trimming a large portion of the graph that is not needed for a user to understand the security problem, and 2) significantly increase the accessibility and understandability of the data presented in the attack graph by clearly showing, within a generated visualization of the network topology, the number and type of potential attacks to which each host is exposed.
机译:存在各种工具来分析企业网络系统并生成攻击图,详细描述攻击者可能如何渗透到系统中。但是,这些攻击图通常很复杂且难以完全理解,并且人类用户可能会发现难以达成适当的配置决策。本文介绍了一些方法,这些方法可以:1)自动识别攻击图中无法帮助用户理解核心安全问题的部分,因此可以对其进行修整,以及2)自动将相似的攻击步骤分组为网络模型中的虚拟节点。拓扑,以立即增加数据的可理解性。我们认为这两种方法都是改进攻击图可视化的重要步骤,以使其在大型企业网络的配置管理中更有用。我们使用现有的攻击图工具包之一实施了我们的方法。初步实验表明,所提出的方法可以:1)通过修剪用户理解安全问题不需要的大部分图来显着降低攻击图的复杂性,以及2)显着提高数据的可访问性和可理解性通过在生成的网络拓扑可视化图中清楚地显示每个主机遭受的潜在攻击的数量和类型,从而在攻击图中进行了呈现。

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