基于时间窗的群体行为支持的异常用户准确检测方法

Lun-Pin Yuan, Euijin Choo, Ting Yu, Issa M. Khalil, Sencun Zhu
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引用次数: 4

摘要

基于自动编码器的异常检测方法已被用于从大型企业日志中识别异常用户,假设敌对活动不遵循过去的习惯模式。大多数现有的方法通常通过重建单日和个人用户行为来构建模型。然而,由于没有捕获长期信号和组相关信号,模型无法识别低信号但持久的威胁,并且会在繁忙的日子错误地将许多正常用户报告为异常,从而导致高误报率。本文提出了一种综合考虑长期模式和群体行为的基于复合行为的异常检测方法——ACOBE。ACOBE利用一种新颖的行为表示和深度自动编码器的集合,并产生一个有序的调查列表。我们的评估表明,在准确率和召回率方面,ACOBE大大优于先前的工作,我们的案例研究表明,ACOBE适用于网络攻击检测的实践。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Time-Window Based Group-Behavior Supported Method for Accurate Detection of Anomalous Users
Autoencoder-based anomaly detection methods have been used in identifying anomalous users from large-scale enterprise logs with the assumption that adversarial activities do not follow past habitual patterns. Most existing approaches typically build models by reconstructing single-day and individual-user behaviors. However, without capturing long-term signals and group-correlation signals, the models cannot identify low-signal yet long-lasting threats, and will wrongly report many normal users as anomalies on busy days, which, in turn, lead to high false positive rate. In this paper, we propose ACOBE, an Anomaly detection method based on COmpound BEhavior, which takes into consideration long-term patterns and group behaviors. ACOBE leverages a novel behavior representation and an ensemble of deep autoencoders and produces an ordered investigation list. Our evaluation shows that ACOBE outperforms prior work by a large margin in terms of precision and recall, and our case study demonstrates that ACOBE is applicable in practice for cyberattack detection.
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