Early Warning Method of Anomaly User Behavior Based on Similarity Analysis in Power Intranet
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    Abstract:

    As an important subject of the network, the behavior analysis of users is an important means to grasp the network security state and has a significant meaning on potential threat mining and early warning. Considering that users of similar roles in the power intranet have similar behaviors, this paper describes the behavior of individual users based on time sequence and builds behavior relevance among the users by self-learning of the similarity of users' behaviors to achieve abnormality analysis by means of behavior similarity deviation. Meanwhile, changes of users' basic attributes are considered to achieve abnormality early warning judgment. Simulation experiments show that the method can discover abnormal behavior and perform early warning by effectively using the similarity analysis of the behavioral sequences.

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金倩倩,陈春霖,于晓文,廖鹏.基于相似度分析的电力信息内网用户行为异常预警方法.计算机系统应用,2017,26(12):220-226

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  • Received:February 27,2017
  • Revised:March 16,2017
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  • Online: December 07,2017
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