作者
Jinhan Kim, Nargiz Humbatova, Gunel Jahangirova, Paolo Tonella, Shin Yoo
发表日期
2023/4/16
来源
2023 IEEE Conference on Software Testing, Verification and Validation (ICST)
页码范围
234-245
出版商
IEEE
简介
As Deep Neural Networks (DNNs) are rapidly being adopted within large software systems, software developers are increasingly required to design, train, and deploy such models into the systems they develop. Consequently, testing and improving the robustness of these models have received a lot of attention lately. However, relatively little effort has been made to address the difficulties developers experience when designing and training such models: if the evaluation of a model shows poor performance after the initial training, what should the developer change? We survey and evaluate existing state-of-the-art techniques that can be used to repair model performance, using a benchmark of both real-world mistakes developers made while designing DNN models and artificial faulty models generated by mutating the model code. The empirical evaluation shows that random baseline is comparable with or …
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J Kim, N Humbatova, G Jahangirova, P Tonella, S Yoo - 2023 IEEE Conference on Software Testing …, 2023