基于变压器的自然语言处理在问题跟踪器中的技术债务分类

Daniel Skryseth, Karthik Shivashankar, I. Pilán, A. Martini
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引用次数: 0

摘要

背景:在软件开发过程中需要对技术债(TD)进行控制和跟踪。在问题跟踪器中自动跟踪TD的支持是有限的。目的:我们探索将开发者标记的TD问题的大型数据集与前沿的自然语言处理(NLP)方法相结合,在问题跟踪器中对TD进行自动分类。方法:我们从GitHub项目中挖掘和分析了160GB以上的文本数据,收集了55600多个TD问题,并将它们整合成一个大数据集(GTD数据集)。我们使用这样的数据集来训练和测试Transformer ML模型。然后,我们通过对六个未见过的项目进行测试来测试模型的泛化能力。最后,我们重新训练模型,包括目标项目的部分TD问题,以测试它们的适应性。结果和结论:(i)我们创建并发布了GTD数据集,这是一个综合数据集,包括来自6,401个不同背景的公共存储库的TD问题;(ii)通过使用GTD数据集训练变形金刚,我们实现了有希望的性能指标;(iii)我们的结果是支持问题跟踪中TD自动分类的重要一步,特别是当模型在微调后适应未见过的项目背景时。
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Technical Debt Classification in Issue Trackers using Natural Language Processing based on Transformers
Background: Technical Debt (TD) needs to be controlled and tracked during software development. Support to automatically track TD in issue trackers is limited. Aim: We explore the usage of a large dataset of developer-labeled TD issues in combination with cutting-edge Natural Language Processing (NLP) approaches to automatically classify TD in issue trackers. Method: We mine and analyze more than 160GB of textual data from GitHub projects, collecting over 55,600 TD issues and consolidating them into a large dataset (GTD dataset). We use such datasets to train and test Transformer ML models. Then we test the model’s generalization ability by testing them on six unseen projects. Finally, we re-train the models including part of the TD issues from the target project to test their adaptability. Results and conclusion: (i) We create and release the GTD dataset, a comprehensive dataset including TD issues from 6,401 public repositories with various contexts; (ii) By training Transformers using the GTD dataset, we achieve performance metrics that are promising; (iii) Our results are a significant step forward towards supporting the automatic classification of TD in issue trackers, especially when the models are adapted to the context of unseen projects after fine-tuning.
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