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Decision tree rule learning approach to counter burst header packet flooding attack in Optical Burst Switching network

机译:决策树规则学习方法在光突发交换网络中对抗突发头包泛洪攻击

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摘要

An Optical Bust Switching (OBS) network is vulnerable to a range of issues. One of the most significant issues is Burst Header Packet (BHP) flooding attacks, which can negatively impact on the Quality of Service (QoS) and create more urgent issues such as Denial of Service (DoS). Existing techniques for countering BHP flood attacks usually display a low accuracy in detecting misbehaving nodes leading to BHP attacks. By contrast, Machine Learning (ML) is a widely adopted and powerful data analysis technique which has showed a high degree of predictive performance in multiple application domains due to its ability to discover beneficial knowledge for decision-making. This study investigates the use of predictive ML to counter the risk of BHP flooding attacks experienced in OBS networks, proposing a decision tree-based architecture as an appropriate solution. This contains a learning algorithm that extracts novel rules from tree models using data processed from several simulation runs. The results show that the rules derived from our learning algorithm will accurately classify 93% of the BHP flooding attacks into either Behaving (B) or Misbehaving (M) classes. Moreover, the rules can further classify the Misbehaving edge nodes into four sub-class labels with 87% accuracy, including: Misbehaving-Block (Block), Behaving-No Block (No Block), Misbehaving-No Block (M-No Block), and Misbehaving-Wait (M-Wait). The results clearly show that our proposed decision tree model is a viable solution compared to decisions undertaken by expert domains or human network administrators.
机译:光学胸围交换(OBS)网络容易受到一系列问题的影响。最重要的问题之一是突发标头数据包(BHP)泛洪攻击,它可能对服务质量(QoS)产生负面影响,并产生更紧急的问题,例如拒绝服务(DoS)。用于抵制BHP泛洪攻击的现有技术通常在检测导致BHP攻击的行为异常的节点方面显示出较低的准确性。相比之下,机器学习(ML)是一种被广泛采用且功能强大的数据分析技术,由于它具有发现决策的有益知识的能力,因此在多个应用程序领域中表现出很高的预测性能。这项研究调查了预测性ML的使用,以应对OBS网络中发生的BHP泛洪攻击的风险,并提出了一种基于决策树的体系结构作为适当的解决方案。它包含一个学习算法,该算法使用从多个模拟运行处理的数据从树模型中提取新规则。结果表明,从我们的学习算法得出的规则可以将93%的BHP泛洪攻击准确地分类为行为(B)或行为不当(M)类。此外,这些规则还可以将错误行为边缘节点进一步分类为四个子类标签,准确性为87%,包括:错误行为块(阻止),行为不阻止(不阻止),行为不阻止(M否阻止) ,以及行为不检定(M-Wait)。结果清楚地表明,与专家域或人工网络管理员做出的决策相比,我们提出的决策树模型是一种可行的解决方案。

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