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Embedding Learning with Heterogeneous Event Sequence for Insider Threat Detection

机译:嵌入式学习与异构事件序列的内部威胁检测

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The insider threat is one of the most significant cyber security threats that an organisation can be subject to. The recent research on insider threat detection mostly focuses on finding out anomalousness or abnormal changes from a series of behaviors such as logon, file usage and USB connection. Such behaviors can be described as time series set of different types of events, which we call heterogeneous event sequence. Due to the lack of intrinsic temporal relationship measures among events that contain multiple entities with categorical values, most existing work extracts action categorical values within the heterogeneous event to calculate abnormal scores for action sequences. Different from previous work, we synthetically consider multiple entities within the heterogeneous event and propose a principled and probabilistic model IPHE (Insider threat detection via Probabilistic pairwise interaction and Heterogeneous Event's entity embedding) that models the likelihood of heterogeneous event sequence. The model embeds entities of heterogeneous events into a common latent space to preserve nonlinear relationships between heterogeneous temporal events. Then the likelihood of heterogeneous event sequence can be computed by the pairwise interactions of different entities of heterogeneous event according to entity embeddings. In particular, due to the imbalance of the occurrence rates of different types of events, we propose typewise learning rate for IPHE to adjust step size during model optimization procedure. Experiment results on the CMU-CERT insider threat dataset prove the effectiveness of our proposed approach over competitive baselines.
机译:内部威胁是组织可能遭受的最重要的网络安全威胁之一。对内部威胁检测的最新研究主要集中在从一系列行为(例如登录,文件使用和USB连接)中发现异常或异常变化。这种行为可以描述为不同类型事件的时间序列集,我们称其为异构事件序列。由于包含多个具有分类值的实体的事件之间缺乏内在的时间关系度量,因此大多数现有工作都提取了异类事件中的动作分类值,以计算动作序列的异常得分。与以前的工作不同,我们综合考虑了异质事件中的多个实体,并提出了一种原理化的概率模型IPHE(通过概率成对交互作用和异质事件实体嵌入进行内幕威胁检测),对异质事件序列的可能性进行建模。该模型将异构事件的实体嵌入到公共潜在空间中,以保留异构时间事件之间的非线性关系。然后,可以根据实体嵌入,通过异构事件的不同实体的成对交互来计算异构事件序列的可能性。特别是,由于不同类型事件的发生率不平衡,我们提出了IPHE的类型化学习率,以在模型优化过程中调整步长。在CMU-CERT内部威胁数据集上的实验结果证明了我们提出的方法在竞争基准之上的有效性。

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