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A Graph-Based Machine Learning Approach for Bot Detection

机译:基于图的机器学习机器人检测方法

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Bot detection using machine learning (ML), with network flow-level features, has been extensively studied in the literature. However, existing flow-based approaches typically incur a high computational overhead and do not completely capture the network communication patterns, which can expose additional aspects of malicious hosts. Recently, bot detection systems which leverage communication graph analysis using ML have gained attention to overcome these limitations. A graph-based approach is rather intuitive, as graphs are true representations of network communications. In this paper, we propose a two-phased, graph-based bot detection system which leverages both unsupervised and supervised ML. The first phase prunes presumable benign hosts, while the second phase achieves bot detection with high precision. Our system detects multiple types of bots and is robust to zero-day attacks. It also accommodates different network topologies and is suitable for large-scale data.
机译:在文献中已经广泛研究了使用具有网络流量级别功能的机器学习(ML)进行的机器人检测。但是,现有的基于流的方法通常会导致较高的计算开销,并且不能完全捕获网络通信模式,这可能会暴露恶意主机的其他方面。最近,利用ML进行通信图分析的机器人检测系统已受到关注,以克服这些局限性。基于图的方法相当直观,因为图是网络通信的真实表示。在本文中,我们提出了一种基于图的两阶段机器人检测系统,该系统利用了无监督和受监督的机器学习。第一阶段修剪可能的良性宿主,而第二阶段则以较高的精度实现僵尸程序检测。我们的系统可以检测多种类型的漫游器,并且对零日攻击具有强大的抵抗力。它还适应不同的网络拓扑,适用于大规模数据。

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