• Title of article

    Malicious Code Detection Model Based on Behavior Association

  • Author/Authors

    Han, Lansheng Huazhong University of Science and Technology - School of Computer Science - Laboratory of Information Security, China , Qian, Mengxiao Huazhong University of Science and Technology - School of Computer Science - Laboratory of Information Security, China , Xu, Xingbo Huazhong University of Science and Technology - School of Computer Science - Laboratory of Information Security, China , Fu, Cai Huazhong University of Science and Technology - School of Computer Science - Laboratory of Information Security, China , Kwisaba, Hamza Huazhong University of Science and Technology - School of Computer Science - Laboratory of Information Security, China

  • From page
    508
  • To page
    515
  • Abstract
    Malicious applications can be introduced to attack users and services so as to gain financial rewards, individuals’ sensitive information, company and government intellectual property, and to gain remote control of systems. However, traditional methods of malicious code detection, such as signature detection, behavior detection, virtual machine detection, and heuristic detection, have various weaknesses which make them unreliable. This paper presents the existing technologies of malicious code detection and a malicious code detection model is proposed based on behavior association. The behavior points of malicious code are first extracted through API monitoring technology and integrated into the behavior; then a relation between behaviors is established according to data dependence. Next, a behavior association model is built up and a discrimination method is put forth using pushdown automation. Finally, the exact malicious code is taken as a sample to carry out an experiment on the behavior’s capture, association, and discrimination, thus proving that the theoretical model is viable.
  • Keywords
    malicious code , behavior monitor , behavior association , pushdown automation
  • Journal title
    Tsinghua Science and Technology
  • Journal title
    Tsinghua Science and Technology
  • Record number

    2535634