Proceedings of the 13th EAI International Conference on Mobile Multimedia Communications, Mobimedia 2020, 27-28 August 2020, Cyberspace

Research Article

Association rule mining of network security monitoring data based on time series

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  • @INPROCEEDINGS{10.4108/eai.27-8-2020.2295724,
        author={Fang  XUE and Rong  LIU},
        title={Association rule mining of network security monitoring data based on time series},
        proceedings={Proceedings of the 13th EAI International Conference on Mobile Multimedia Communications, Mobimedia 2020, 27-28 August 2020, Cyberspace},
        publisher={EAI},
        proceedings_a={MOBIMEDIA},
        year={2020},
        month={11},
        keywords={time series; network security monitoring; association rule mining; data cleaning},
        doi={10.4108/eai.27-8-2020.2295724}
    }
    
  • Fang XUE
    Rong LIU
    Year: 2020
    Association rule mining of network security monitoring data based on time series
    MOBIMEDIA
    EAI
    DOI: 10.4108/eai.27-8-2020.2295724
Fang XUE1,*, Rong LIU2
  • 1: Information Technology Center, Jimei University, XiaMen 361021, China
  • 2: School of Information Engineering, Changsha Medical University, Changsha 410219, China
*Contact email: aaa21152@163.com

Abstract

The traditional network security monitoring number association rule mining technology has low mining accuracy, so a time series based network security monitoring data association rule mining technology is designed. The preprocessing of time series to construct the corresponding time series frequency set, using SWFI - tree structure data storage model is set up, get after filtering and reorder the transaction data set, data sets of will be clean and remove invalid data and the remaining data formatting, finally USES the particle swarm optimization (pso) algorithm with limited data flow, recursive calculation of particle movement, build sparse list, complete monitoring data mining of association rules. The designed mining technology was used in the experiment with the traditional technology, and the experimental results showed that the designed mining technology was 23.22% more accurate than the traditional technology.