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Big Data Analytics framework for Peer-to-Peer Botnet detection using Random Forests

机译:使用随机森林进行对等僵尸网络检测的大数据分析框架

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摘要

Network traffic monitoring and analysis-related research has struggled to scale for massive amounts of data in real time. Some of the vertical scaling solutions provide good implementation of signature based detection. Unfortunately these approaches treat network flows across different subnets and cannot apply anomaly-based classification if attacks originate from multiple machines at a lower speed, like the scenario of Peer-to-Peer Botnets. In this paper the authors build up on the progress of open source tools like Hadoop, Hive and Mahout to provide a scalable implementation of quasi-real-time intrusion detection system. The implementation is used to detect Peer-to-Peer Botnet attacks using machine learning approach. The contributions of this paper are as follows: (1) Building a distributed framework using Hive for sniffing and processing network traces enabling extraction of dynamic network features; (2) Using the parallel processing power of Mahout to build Random Forest based Decision Tree model which is applied to the problem of Peer-to-Peer Botnet detection in quasi-real-time. The implementation setup and performance metrics are presented as initial observations and future extensions are proposed.
机译:与网络流量监控和分析相关的研究一直难以实时扩展大规模数据。一些垂直缩放解决方案提供了基于签名的检测的良好实现。不幸的是,这些方法对待跨不同子网的网络流,并且如果攻击源自较低速度的多台计算机(如对等僵尸网络的情况),则无法应用基于异常的分类。在本文中,作者基于Hadoop,Hive和Mahout等开源工具的进步来提供准实时入侵检测系统的可扩展实现。该实现用于使用机器学习方法检测对等僵尸网络攻击。本文的贡献如下:(1)使用Hive构建一个分布式框架,用于嗅探和处理网络跟踪,从而提取动态网络特征; (2)利用Mahout的并行处理能力,建立了基于随机森林的决策树模型,将其应用于准实时的对等僵尸网络检测问题。实施设置和性能指标作为初始观察结果和未来扩展提出。

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