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Exploring a service-based normal behaviour profiling system for botnet detection

机译:探索用于僵尸网络检测的基于服务的正常行为分析系统

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Effective detection of botnet traffic becomes difficult as the attackers use encrypted payload and dynamically changing port numbers (protocols) to bypass signature based detection and deep packet inspection. In this paper, we build a normal profiling-based botnet detection system using three unsupervised learning algorithms on service-based flow-based data, including self-organizing map, local outlier, and k-NN outlier factors. Evaluations on publicly available botnet data sets show that the proposed system could reach up to 91% detection rate with a false alarm rate of 5%.
机译:由于攻击者使用加密的有效负载并动态更改端口号(协议)以绕过基于签名的检测和深度数据包检查,因此难以有效检测僵尸网络流量。在本文中,我们使用三种无监督学习算法对基于服务的基于流的数据构建了一个基于配置文件的常规僵尸网络检测系统,包括自组织图,局部离群值和k-NN离群值因素。对公开可用的僵尸网络数据集的评估表明,提出的系统可以达到高达91%的检测率,错误警报率为5%。

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