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Anomaly-Based Identification of Large-Scale Attacks

机译:基于异常的大规模攻击识别

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摘要

Large-scale attacks like distributed denial-of-service (DDoS) attacks still pose unpredictable threats to the Internet infrastructure and Internet-based business. Thus, many attack detection systems using various anomaly detection methods were developed in the past. These detection systems result in a set of anomalies detected by analysis of the traffic behavior. A realtime identification of the attack type that is represented by those anomalies simplifies important tasks like taking countermeasures and visualizing the network state. In addition, an identification facilitates a collaboration of distributed heterogeneous detection systems. In this paper, we first lay the foundations for a generalized identification system by establishing a model of those entities that form anomaly-based attack detection: large-scale attacks, anomalies, and anomaly detection methods. Based on this flexible model, an adaptable and resource-aware system for the identification of large-scale attacks is developed that additionally offers an autonomous processing control.
机译:诸如分布式拒绝服务(DDoS)攻击之类的大规模攻击仍然对Internet基础结构和基于Internet的业务构成不可预测的威胁。因此,过去开发了许多使用各种异常检测方法的攻击检测系统。这些检测系统导致一组异常,这些异常是通过对交通行为的分析而检测到的。由这些异常表示的攻击类型的实时识别可简化重要的任务,例如采取对策和可视化网络状态。另外,识别有助于分布式异构检测系统的协作。在本文中,我们首先通过建立那些构成基于异常的攻击检测的实体的模型来建立通用识别系统的基础:大规模攻击,异常和异常检测方法。基于这种灵活的模型,开发了一种用于识别大规模攻击的自适应资源感知系统,该系统还提供了自动处理控制。

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