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Detection of slow port scans in flow-based network traffic

机译:在基于流的网络流量中检测慢速端口扫描

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摘要

Frequently, port scans are early indicators of more serious attacks. Unfortunately, the detection of slow port scans in company networks is challenging due to the massive amount of network data. This paper proposes an innovative approach for preprocessing flow-based data which is specifically tailored to the detection of slow port scans. The preprocessing chain generates new objects based on flow-based data aggregated over time windows while taking domain knowledge as well as additional knowledge about the network structure into account. The computed objects are used as input for the further analysis. Based on these objects, we propose two different approaches for detection of slow port scans. One approach is unsupervised and uses sequential hypothesis testing whereas the other approach is supervised and uses classification algorithms. We compare both approaches with existing port scan detection algorithms on the flow-based CIDDS-001 data set. Experiments indicate that the proposed approaches achieve better detection rates and exhibit less false alarms than similar algorithms.
机译:通常,端口扫描是更严重攻击的早期指标。不幸的是,由于海量的网络数据,在公司网络中检测慢速端口扫描具有挑战性。本文提出了一种创新的方法来预处理基于流的数据,该方法专门针对检测慢速端口扫描而设计。预处理链基于在时间窗口内聚合的基于流的数据生成新对象,同时将域知识以及有关网络结构的其他知识考虑在内。所计算的对象用作进一步分析的输入。基于这些对象,我们提出了两种不同的检测慢速端口扫描的方法。一种方法是无监督的,并使用顺序假设检验,而另一种方法是有监督的,并使用分类算法。我们将两种方法与基于流的CIDDS-001数据集上的现有端口扫描检测算法进行比较。实验表明,与类似算法相比,所提方法具有更高的检测率和更少的误报。

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