Learning To Repair Software Vulnerabilities With Generative Adversarial Networks

Jacob Harer Boston University
Onur Ozdemir Draper
Tomo Lazovich Lightmatter
Christopher Reale Draper
Rebecca Russell Draper
Louis Kim Draper
Peter Chin boston university


Motivated by the problem of automated repair of software vulnerabilities, we propose an adversarial learning approach that maps from one discrete source domain to another target domain without requiring paired labeled examples or source and target domains to be bijections. We demonstrate that the proposed adversarial learning approach is an effective technique for repairing software vulnerabilities, performing close to seq2seq approaches that require labeled pairs. The proposed Generative Adversarial Network approach is application-agnostic in that it can be applied to other problems similar to code repair, such as grammar correction or sentiment translation.

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