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An Empirical Study on JIT Defect Prediction Based on BERT-style Model

Software Engineering 2024-03-19 v1

Abstract

Previous works on Just-In-Time (JIT) defect prediction tasks have primarily applied pre-trained models directly, neglecting the configurations of their fine-tuning process. In this study, we perform a systematic empirical study to understand the impact of the settings of the fine-tuning process on BERT-style pre-trained model for JIT defect prediction. Specifically, we explore the impact of different parameter freezing settings, parameter initialization settings, and optimizer strategies on the performance of BERT-style models for JIT defect prediction. Our findings reveal the crucial role of the first encoder layer in the BERT-style model and the project sensitivity to parameter initialization settings. Another notable finding is that the addition of a weight decay strategy in the Adam optimizer can slightly improve model performance. Additionally, we compare performance using different feature extractors (FCN, CNN, LSTM, transformer) and find that a simple network can achieve great performance. These results offer new insights for fine-tuning pre-trained models for JIT defect prediction. We combine these findings to find a cost-effective fine-tuning method based on LoRA, which achieve a comparable performance with only one-third memory consumption than original fine-tuning process.

Keywords

Cite

@article{arxiv.2403.11158,
  title  = {An Empirical Study on JIT Defect Prediction Based on BERT-style Model},
  author = {Yuxiang Guo and Xiaopeng Gao and Bo Jiang},
  journal= {arXiv preprint arXiv:2403.11158},
  year   = {2024}
}
R2 v1 2026-06-28T15:23:10.991Z