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Quantifying the association between discrete event time series with applications to digital forensics

机译:通过应用于数字取证的离散事件时间序列之间的关联

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摘要

We consider the problem of quantifying the degree of association between pairs of discrete event time series, with potential applications in forensic and cybersecurity settings. We focus in particular on the case where two associated event series exhibit temporal clustering such that the occurrence of one type of event at a particular time increases the likelihood that an event of the other type will also occur nearby in time. We pursue a non-parametric approach to the problem and investigate various score functions to quantify association, including characteristics of marked point processes and summary statistics of interevent times. Two techniques are proposed for assessing the significance of the measured degree of association: a population-based approach to calculating score-based likelihood ratios when a sample from a relevant population is available, and a resampling approach to computing coincidental match probabilities when only a single pair of event series is available. The methods are applied to simulated data and to two real world data sets consisting of logs of computer activity and achieve accurate results across all data sets.
机译:我们考虑量化离散事件时间序列成对之间的关​​联程度的问题,具有法医和网络安全设置的潜在应用。我们尤其专注于两个相关事件系列表现出时间聚类的情况,使得在特定时间在特定时间发生一种类型的事件的情况增加了其他类型的事件的可能性也将在附近发生。我们追求了问题的非参数方法,并调查各种分数函数来量化关联,包括标记点过程的特征和默认时间的概要统计。提出了两种技术来评估测量的关联程度的重要性:当来自相关人群的样本时,基于人群的基于似然比计算得分的似然比,以及仅在单个单个时计算巧合匹配概率的重采样方法一对事件系列可用。这些方法应用于模拟数据和两个真实世界数据集,由计算机活动的日志组成,并在所有数据集中实现准确的结果。

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