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Insider Cyber Threat Situational Awareness Framework using Dynamic Bayesian Networks

机译:使用动态贝叶斯网络的内幕网络威胁情境意识框架

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Insider cyber threat is a serious problem in resent years. Many traditional methods such as intrusion detection system and prevention system can not effectively deal with insider attack problems because they lack of dynamic inference capability to acquire and understand cyber situational awareness. This paper presented a framework model based on DBN to capture the dynamic user behavior and establish and improve inference ability. This model has used transition relationship of DBN and HMM and its better performance inference algorithm to infer next activity. Those performances are verified and compared by the experiments in the end.
机译:Insider Cyber​​威胁是怨恨岁月的严重问题。许多传统方法,如入侵检测系统和预防系统都无法有效地处理内幕攻击问题,因为它们缺乏动态推理能力来获取和理解网络情境意识。本文介绍了基于DBN的框架模型,以捕获动态用户行为并建立和提高推理能力。该模型使用DBN和HMM的转换关系及其更好的性能推理算法来推断下一个活动。这些表演通过实验验证并通过实验进行了比较。

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