Improving the Robustness of the Bug Triage Model through Adversarial Training
  • Kim, M.-H.
  • Wang, D.-S.
  • Wang, S.-T.
  • Park, S.-H.
  • Lee, C.-G.
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초록

Recently, research on automated bug triage using deep neural networks is being actively conducted. Unfortunately, there have been few studies on improving the robustness of the bug triage models through adversarial training. In this paper, we present an approach to evaluate and improve the robustness of the bug triage model. We present a new method for generating adversarial bug reports. We exploit the test coverage to compare the robustness of various models for bug triage. The experimental results suggest that our model has better robustness. In addition, the proposed technique for adversarial data generation is superior compared to the existing techniques in three aspects: Adversarial data generation time, document similarity, and word change rate. © 2022 IEEE.

키워드

Adversarial TrainingBug TriageRobustness
제목
Improving the Robustness of the Bug Triage Model through Adversarial Training
저자
Kim, M.-H.Wang, D.-S.Wang, S.-T.Park, S.-H.Lee, C.-G.
DOI
10.1109/ICOIN53446.2022.9687279
발행일
2022-01
유형
Proceedings Paper
저널명
International Conference on Information Networking
2022-January
페이지
478 ~ 481