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Sensing Attacks in Computers Networks with Hidden Markov Models

机译:隐马尔可夫模型在计算机网络中的感知攻击

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摘要

In this work, we propose an Intrusion Detection model for computer newtorks based on Hidden Markov Models. While stateful techniques are widely used to detect intrusion at the operating system level, by tracing the sequences of system calls, this issue has been rarely researched for the analysis of network traffic. The proposed model aims at detecting intrusions by analysing the sequences of commands that flow between hosts in a network for a particular service (e.g., an ftp session). First the system must be trained in order to learn the typical sequences of commands related to innocuous connections. Then, intrusion detection is performed by indentifying anomalous sequences. To harden the proposed system, we propose some techniques to combine HMM. Reported results attained on the traffic acquired from a European ISP shows the effectiveness of the proposed approach.
机译:在这项工作中,我们提出了一种基于隐马尔可夫模型的计算机拓扑入侵检测模型。尽管有状态技术已广泛用于在操作系统级别检测入侵,但通过跟踪系统调用的顺序,很少研究此问题来分析网络流量。提出的模型旨在通过分析针对特定服务(例如ftp会话)的网络主机之间流动的命令序列来检测入侵。首先,必须对系统进行培训,以学习与无害连接相关的典型命令序列。然后,通过识别异常序列来执行入侵检测。为了强化提出的系统,我们提出了一些结合HMM的技术。从欧洲ISP获得的流量获得的报告结果表明了该方法的有效性。

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