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Effective Change Detection in Large Repositories of Unsolicited Traffic

机译:在未经请求的流量的大型存储库中进行有效的更改检测

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When monitoring unsolicited network traffic automated detection and characterization of abrupt changes in the traffics statistical properties is important. These abrupt changes can either be due to a single or multiple anomalous activities taking place at the same time. The start of a new anomalous activity while another anomalous activity is in operation will result in a new change nested within the previous change. Although detection of abrupt changes to identify malicious activities has received considerable attention in the past, automated detection of nested changes has not been addressed. In this paper a dynamic sliding window cumulative sum (CUSUM) algorithm is proposed to automatically identify these nested changes. The novelty of the proposed technique lies in its ability to automatically detect nested changes, without which interesting activities may go undetected, and its effectiveness in identifying both the start and the end of the individual changes. Using an analysis of real network traces, we show that the identified nested changes were indeed due to distinct malicious behaviours taking place in parallel.
机译:当监视未经请求的网络流量时,流量的统计特性的自动检测和特征的突然变化很重要。这些突然的变化可能是由于同时发生一次或多次异常活动。在另一个异常活动正在运行的同时开始新的异常活动将导致嵌套在先前更改中的新更改。尽管过去发现用于识别恶意活动的突然更改已受到相当大的关注,但是尚未解决自动检测嵌套更改的问题。本文提出了一种动态滑动窗口累积和(CUSUM)算法来自动识别这些嵌套的变化。所提出的技术的新颖性在于它能够自动检测嵌套的更改(没有这些有趣的活动可能被检测到)的能力,以及它在识别单个更改的开始和结束时的有效性。通过对真实网络踪迹的分析,我们发现识别出的嵌套更改确实是由于并行发生的明显恶意行为所致。

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