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GSLAC: A General Scalable and Low-Overhead Alert Correlation Method

机译:GSLAC:一种通用的可伸缩且开销较低的警报关联方法

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摘要

Causal-based alert correlation is one of the mainstream techniques to detect multi-step threat behaviors. However, because large-scale network generates high-speed alerts and alert type distribution in dataflow changes over time, it is challenging to increase generality, scalability and reduce overhead for causal alert correlation method. In this paper, we propose a novel general, scalable and low-overhead alert correlation method, called GSLAC. GSLAC first presents a "dispatch-aggregate" scheme based online alert correlation framework and employs a general causal based alert correlation method to detect diverse threat behaviors. To provide scalable and low-overhead correlating service, a hybrid correlation graph partition solution is proposed to divide correlation graph into multiple sub-graphs managed by a group of parallel servers according to the overhead caused by the alert types. To adapt to the change of alert type distribution in dataflow, GSLAC rebalances their workloads by a dynamic hot spots migration technique. A prototype deployment on Storm platform shows that GSLAC achieves scalable alert correlation throughput with the growth of servers, good load balance with the distribution change of alert dataflow, low overhead with the high-speed dataflow, and significantly outperforms the existing methods with real world dataset.
机译:基于因果的警报关联是检测多步威胁行为的主流技术之一。但是,由于大型网络会生成高速警报,并且数据流中的警报类型分布会随时间变化,因此,提高因果警报关联方法的通用性,可伸缩性并减少开销是一项挑战。在本文中,我们提出了一种新颖的,通用的,可扩展的且开销很小的警报关联方法,称为GSLAC。 GSLAC首先提出了一种基于“警报分配”方案的在线警报关联框架,并采用了一种基于因果关系的通用警报关联方法来检测各种威胁行为。为了提供可扩展且低开销的相关服务,提出了一种混合相关图分区解决方案,根据警报类型引起的开销,将相关图分为由一组并行服务器管理的多个子图。为了适应数据流中警报类型分布的变化,GSLAC通过动态热点迁移技术来重新平衡其工作负载。 Storm平台上的原型部署表明,随着服务器的增长,GSLAC实现了可扩展的警报关联吞吐量,通过警报数据流的分布变化实现了良好的负载平衡,通过高速数据流实现了较低的开销,并且在实际数据集方面明显优于现有方法。

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