• Title of article

    Polymorphic malicious javascript code detection for APT attack defence

  • Author/Authors

    Choi, Junho Chosun University - Division of Undeclared Majors, South Korea , Choi, Chang Chosun University - Department of Computer Engineering, South Korea , You, Ilsun Korean Bible University - School of Information Science, South Korea , Kim, Pankoo Chosun University - Department of Computer Engineering, South Korea

  • From page
    369
  • To page
    383
  • Abstract
    The majority of existing malware detection techniques detects malicious codes by identifying malicious behavior patterns. However,they have difficulty identifying new or modified malicious behaviors; consequently,new techniques that can effectively and accurately detect new malicious behaviors are crucial. This paper proposes a method that defines the malicious behaviors of malware using conceptual graphs that are able to describe their concepts and the relationships among them and,consequently,infer their malicious behavior patterns. The inferred patterns are then learned by a Support Vector Machine (SVM) classifier that compares and classifies the behaviors as either normal or malicious. The results of experiments conducted verify that the proposed method detects malicious codes more efficiently than conventional methods. In the experimental results,it exhibits a better detection rate than that of malicious code detection methods that rely solely on the signature based approach. This suggests that the proposed method is not only suitable for detection of malicious codes,but is also more efficient than other detection methods as it combines the advantages of more than two malicious code detection methods.
  • Keywords
    Conceptual graph , Malicious code detection , APT attack defence
  • Journal title
    Journal of J.UCS (Journal of Universal Computer Science)
  • Journal title
    Journal of J.UCS (Journal of Universal Computer Science)
  • Record number

    2715298