Mandala von Westenholz, Martin Atzmueller, Tim Römer
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引用次数: 0
摘要
在研究入侵检测数据时,我们考虑的数据点是指单个 IP 地址及其连接:我们构建与这些数据点相关联的网络,这样,图中的顶点就通过相应的 IP 地址关联起来,其关键特性是,被攻击的数据点是网络结构的一部分。更确切地说,我们提出了一种新方法,即使用简单复合物来根据简单属性对所需网络和预期入侵进行建模,从而推广以前基于图的方法。与简约复合体相关的网络中心度量经调整后会产生与顶点相关的所谓模式,这些模式本身包含一系列特征。然后,这些特征分别用于描述被攻击或攻击者的顶点。将这种新策略与经典概念进行比较,可以证明所提出的利用简单特征检测和描述入侵的方法具有优势。
Simplicial complexes in network intrusion profiling
For studying intrusion detection data we consider data points referring to
individual IP addresses and their connections: We build networks associated
with those data points, such that vertices in a graph are associated via the
respective IP addresses, with the key property that attacked data points are
part of the structure of the network. More precisely, we propose a novel
approach using simplicial complexes to model the desired network and the
respective intrusions in terms of simplicial attributes thus generalizing
previous graph-based approaches. Adapted network centrality measures related to
simplicial complexes yield so-called patterns associated to vertices, which
themselves contain a set of features. These are then used to describe the
attacked or the attacker vertices, respectively. Comparing this new strategy
with classical concepts demonstrates the advantages of the presented approach
using simplicial features for detecting and characterizing intrusions.