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Reducing False Positives of User-to-Entity First-Access Alerts for User Behavior Analytics

机译:减少用于用户行为分析的用户到实体首次访问警报的误报

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Detecting security threats from compromised account or malicious insider by leveraging enterprise traffic logs is the goal of user behavior-based analytics. For its ease of interpretation, a common analytic indicator used in the industry for user behavior analytics is whether a user accesses a network entity, such as a machine or process, for the first time. While this popular indicator does correlate well with the threat activities, it has the potential of generating volumes of false positives. This creates a problem for an analytic system of which the first-time access alerting capability is a part. We believe that the false positive rate from the indicator can be reduced by learning from users' historical entity access patterns and user context information. If the first-time access is expected, then its corresponding alert is suppressed. In this paper, we propose a user-to-entity prediction score which uses a recommender system for learning user data. In particular, we use factorization machines, along with necessary data normalization steps, to make predictions on real-world enterprise logs. We demonstrate this novel method is capable of reducing false positives of users' first-time entity access alerts in user behavior analytics applications.
机译:通过利用企业流量日志来检测来自受感染帐户或恶意内部人员的安全威胁是基于用户行为的分析的目标。为了便于解释,行业中用于用户行为分析的常见分析指标是用户是否第一次访问网络实体,例如机器或进程。尽管该流行指标确实与威胁活动密切相关,但它有可能产生大量误报。这就给分析系统带来了问题,其中首次访问警报功能是其中的一部分。我们认为,可以通过学习用户的历史实体访问模式和用户上下文信息来减少指标的误报率。如果期望首次访问,则将禁止其相应的警报。在本文中,我们提出了一个用户到实体的预测分数,该分数使用推荐器系统来学习用户数据。特别是,我们使用分解机以及必要的数据规范化步骤来对真实企业日志进行预测。我们证明了这种新颖的方法能够减少用户行为分析应用程序中用户首次实体访问警报的误报。

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