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Self-Supervised Bug Detection and Repair

BugLab uses self-supervised learning to enhance bug detection and repair by co-training a detector and selector model, significantly improving performance on real-world datasets.

Year
2021
Venue
NeurIPS 2021 12
Authors
3
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arxiv.org/abs/2105.12787v3ARXIV-DEFAULT
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Abstract

Machine learning-based program analyses have recently shown the promise of integrating formal and probabilistic reasoning towards aiding software development. However, in the absence of large annotated corpora, training these analyses is challenging. Towards addressing this, we present BugLab, an approach for self-supervised learning of bug detection and repair. BugLab co-trains two models: (1) a detector model that learns to detect and repair bugs in code, (2) a selector model that learns to create buggy code for the detector to use as training data. A Python implementation of BugLab improves by up to 30% upon baseline methods on a test dataset of 2374 real-life bugs and finds 19 previously unknown bugs in open-source software.

Authors

3