CROSS SITE REQUEST FORGERY DETECTION USING MACHINE LEARNING

Authors

  • Chittari Deepika Author
  • Mrs. M. Sivamma Author
  • Dr.D.William Albert Author

Keywords:

Machine Learning (ML), detection of web application vulnerabilities, Cross-Site Request Forgery (CSRF) vulnerabilities, programming practices

Abstract

In this project, we propose a methodology to leverage Machine Learning (ML) for the detection of web application vulnerabilities. Web applications are particularly challenging to analyses, due to their diversity and the widespread adoption of custom programming practices. ML is thus very helpful for web application security: it can take advantage of manually labeled data to bring the human
understanding of the web application semantics into automated analysis tools. We use our methodology in the design of Mitch, the first ML solution for the black-box detection of Cross-Site Request Forgery (CSRF) vulnerabilities. Mitch allowed us to identify 35 new CSRFs on 20 major websites and 3 new CSRFs on production software.

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Published

05-07-2024

How to Cite

CROSS SITE REQUEST FORGERY DETECTION USING MACHINE LEARNING. (2024). International Journal of Information Technology and Computer Engineering, 12(3), 45-51. https://ijitce.org/index.php/ijitce/article/view/641