ISSN 0253-2778

CN 34-1054/N

Open AccessOpen Access JUSTC

XSS attack detection based on Bayesian network

Cite this:
https://doi.org/10.3969/j.issn.0253-2778.2019.02.012
  • Received Date: 04 October 2018
  • Rev Recd Date: 04 December 2018
  • Publish Date: 28 February 2019
  • Cross-site scripting (XSS) attack is one of the most serious cyber-attacks. Traditional XSS detection methods mainly focus on the vulnerability itself, relying on static analysis and dynamic analysis, which appear weak in defending the flood of various kinds of payloads. An XSS attack detection method is proposed based on the Bayesian network, in which the nodes are acquired with domain knowledge. The ontology constructed with domain knowledge provides a good basis for feature selection, and 17 features have been abstracted from it; besides, malicious IPs and malicious domain names collected from open source channels make effective complement rules for the detection of new attacks. To validate the proposed method, experiments were conducted on a collected real-world dataset about XSS attacks. The results show that the proposed method could maintain a detection accuracy of above 90%.
    Cross-site scripting (XSS) attack is one of the most serious cyber-attacks. Traditional XSS detection methods mainly focus on the vulnerability itself, relying on static analysis and dynamic analysis, which appear weak in defending the flood of various kinds of payloads. An XSS attack detection method is proposed based on the Bayesian network, in which the nodes are acquired with domain knowledge. The ontology constructed with domain knowledge provides a good basis for feature selection, and 17 features have been abstracted from it; besides, malicious IPs and malicious domain names collected from open source channels make effective complement rules for the detection of new attacks. To validate the proposed method, experiments were conducted on a collected real-world dataset about XSS attacks. The results show that the proposed method could maintain a detection accuracy of above 90%.
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