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Communication-Efficient Tracking of Distributed Cumulative Triggers

机译:分布式累积触发器的高效通信跟踪

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In recent work, we proposed D-Trigger, a framework for tracking a global condition over a large network that allows us to detect anomalies while only collecting a very limited amount of data from distributed monitors. In this paper, we expand our previous work by designing a new class of queries (conditions) that can be tracked for anomaly violations. We show how security violations can be detected over a time window of any size. This is important because security operators do not know in advance the window of time in which measurements should be made to detect anomalies. We also present an algorithm that determines how each machine should filter its time series measurements before back-hauling them to a central operations center. Our filters are computed analytically such that upper bounds on false positive and missed detection rates are guaranteed. In our evaluation, we show that botnet detection can be carried out successfully over a distributed set of machines, while simultaneously filtering out 80 to 90% of the measurement data.
机译:在最近的工作中,我们提出了D-Trigger,一种用于在大型网络上跟踪全局状况的框架,该框架使我们能够检测异常,而仅从分布式监视器中收集非常有限的数据。在本文中,我们通过设计可以跟踪异常违规行为的新型查询(条件)来扩展以前的工作。我们展示了如何在任意大小的时间窗口内检测到安全违规。这很重要,因为安全操作员事先不知道应进行测量以检测异常的时间范围。我们还提出了一种算法,该算法确定每台机器在将时间序列测量值回传到中央运营中心之前应如何过滤其时间序列测量值。我们对滤波器进行了分析计算,从而确保了误报率和漏检率的上限。在我们的评估中,我们表明僵尸​​网络检测可以在一组分布式计算机上成功进行,同时可以过滤掉80%到90%的测量数据。

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