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Tool Support for the Evaluation of Anomaly Traffic Classification for Network Resilience

机译:工具支持对网络弹性的异常流量分类评估

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Resilience is the ability of the network to maintain an acceptable level of operation in the face of anomalies, such as malicious attacks, operational overload or misconfigurations. Techniques for anomaly traffic classification are often used to characterize suspicious network traffic, thus supporting anomaly detection schemes in network resilience strategies. In this paper, we extend the PReSET toolset to allow the investigation, comparison and analysis of algorithms for anomaly traffic classification based on machine learning. PReSET was designed to allow the simulation-based evaluation of resilience strategies, thus enabling the comparison of optimal configurations and policies for combating different types of attacks (e.g., DDoS attacks, worms) and other anomalies. In such resilience strategies, policies written in the Ponder2 language can be used to activate/reconfigure traffic classification modules and other mechanisms (e.g., traffic shaping), depending on monitored results in the simulation environment. Our results show that PReSET can be a valuable tool for network operators to evaluate anomaly traffic classification techniques in terms of standard performance metrics.
机译:弹性是网络在面对异常中保持可接受的操作水平的能力,例如恶意攻击,操作过载或错误控制。异常流量分类的技术通常用于表征可疑网络流量,从而支持网络恢复力策略中的异常检测方案。在本文中,我们扩展了预设工具集,以允许基于机器学习的异常流量分类算法的调查,比较和分析。预设旨在允许基于仿真的恢复策略评估,从而实现了对抗不同类型的攻击(例如,DDOS攻击,蠕虫)和其他异常的最佳配置和政策的比较。在这种恢复力策略中,在PONDER2语言中写入的策略可用于激活/重新配置流量分类模块和其他机制(例如,流量整形),具体取决于模拟环境中的监视结果。我们的结果表明,预设可以是网络运营商在标准性能指标方面评估异常流量分类技术的宝贵工具。

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