Deep learning based automatic software defects detection framework

  • Chrenousov A
  • Savchenko A
  • Osadchyi S
  • et al.
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Abstract

We present the VulDetect, a source code vulnerability detection system. This system uses deep learning methods to organizate rules for deciding whether a code fragment is vulnerable. This approach is an improvement of the approach proposed in VulDeePecker. The model uses the AST representation of the source code. We compared vulnerability detection results of both systems on the Bitcoin Core project.

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Chrenousov, A., Savchenko, A., Osadchyi, S., Kubiuk, Y., Kostenko, Y., & Likhomanov, D. (2019). Deep learning based automatic software defects detection framework. Theoretical and Applied Cybersecurity, 1(1). https://doi.org/10.20535/tacs.2664-29132019.1.169086

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