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Research of Snort Rule Extension and APT Detection Based on APT Network Behavior Analysis

  • Yan CuiEmail author
  • Jingfeng Xue
  • Yong Wang
  • Zhenyan Liu
  • Ji Zhang
Conference paper
Part of the Communications in Computer and Information Science book series (CCIS, volume 960)

Abstract

At present, APT attack detection has become the focus of the network security protection field. APT attacks are one of the most difficult attacks in cyber attacks. The complexity and variability of APT attack behavior greatly increases the difficulty of attack detection. In order to cope with APT attack, some well-known network security companies at home and abroad have developed a commercial APT intrusion detection system. This highly targeted attack can not be identified by the traditional intrusion detection system. Therefore, in order to deal with this new type of cyber attack. The paper proposes a new method to detect APT attack from different organizations. Data mining algorithm is used to analyze every organization’s APT network attack behavior and obtain association rules, so as to customize the design of the Snort rules and apply them to intrusion detection system. Experiments have shown that the evaluation index of the intrusion detection system using the extended Snort rule is significantly better than the traditional Snort intrusion detection system when detecting the same test data. The precision of the extended Snort intrusion detection system is as high as 98.3%, and the false alarm rate is almost 0, which ultimately achieves the purpose of APT detection.

Keywords

APT Snort rule Network behavior Data mining 

Notes

Acknowledgments

This work was supported in part by the National Key Research and Development Program of China under Grant 2016YFB0801304.

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Copyright information

© Springer Nature Singapore Pte Ltd. 2019

Authors and Affiliations

  • Yan Cui
    • 1
    Email author
  • Jingfeng Xue
    • 1
  • Yong Wang
    • 1
  • Zhenyan Liu
    • 1
  • Ji Zhang
    • 1
  1. 1.School of Computer Science and TechnologyBeijing Institute of TechnologyBeijingChina

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