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Towards a User and Role-Based Behavior Analysis Method for Insider Threat Detection

机译:面向内部威胁检测的基于用户和基于角色的行为分析方法

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Organizations are experiencing an ever-growing concern of how to identify and defend against insider threats. Existing methods have distinguished the minority of users who show suspicious behavior from the majority of users. However, these methods failed to apply the features reflecting the deviation between the behaviors of users and those of their user groups within the similar job roles. This paper focuses on insider threat detection by conducting both user and role behaviors analysis. It extracts multiple features that represent the details of activities conducted by each user and their deviations from the behaviors of their user groups. The malicious users are then detected by using an unsupervised algorithm, Isolation Forest Algorithm, which evaluates the variance that each user exhibits across multiple attributes, compared against the other users. To evaluate the performance of the proposed models comprehensively, we implement a series of experiments with the data lasting 17 months. We compare the proposed method with an existing state-of-the-art method and the results demonstrate the robust performance of the proposed detection method.
机译:组织对于如何识别和防御内部威胁的关注与日俱增。现有方法已将显示可疑行为的少数用户与大多数用户区分开。但是,这些方法未能应用反映相似工作角色中用户与其用户组的行为之间的偏差的功能。本文通过进行用户和角色行为分析,重点研究内部威胁。它提取了多个功能,这些功能代表每个用户执行的活动的详细信息以及它们与用户组的行为的偏离。然后,通过使用非监督算法(隔离林算法)检测恶意用户,该算法评估每个用户相对于其他用户在多个属性上表现出的差异。为了全面评估所提出模型的性能,我们对数据进行了为期17个月的一系列实验。我们将提出的方法与现有的最新方法进行了比较,结果证明了提出的检测方法的鲁棒性能。

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