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Attacker Behavior-Based Metric for Security Monitoring Applied to Darknet Analysis

机译:基于攻击者行为的安全监控指标应用于暗网分析

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Network traffic monitoring is primordial for network operations and management including Quality-of-Service or security. One major difficulty when dealing with network traffic data (packets, flows, etc) is the poor semantic of individual attributes (number of bytes, packets, IP addresses, protocol, TCP/UDP port numbers, etc). Many of them can be represented as numerical values but cannot be mapped to a meaningful metric space. Most notably are application port numbers. They are numerical but comparing them as integers is meaningless. In this paper, we propose a fine grained attacker behavior-based similarity metric allowing traffic analysis to take into account semantic relations between port numbers. The behavior of attackers is derived from passive observation of a darknet or telescope, aggregated in a graph model, from which a dissimilarity function is defined. We demonstrate the veracity of this function with real world network data in order to pro-actively block 99% of TCP scans.
机译:网络流量监视是网络运营和管理(包括服务质量或安全性)的基础。处理网络流量数据(数据包,流等)时的一个主要困难是各个属性(字节数,数据包,IP地址,协议,TCP / UDP端口号等)的语义不佳。它们中的许多可以表示为数值,但不能映射到有意义的度量空间。最值得注意的是应用程序端口号。它们是数字,但将它们作为整数进行比较是没有意义的。在本文中,我们提出了一种基于细粒度攻击者行为的相似性度量,该度量允许流量分析考虑端口号之间的语义关系。攻击者的行为源自对暗网或望远镜的被动观察,并被汇总在图形模型中,由此定义了相异函数。我们演示了此功能在真实世界网络数据中的准确性,以便主动阻止99%的TCP扫描。

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