迁移缺陷学习

Jaechang Nam, Sinno Jialin Pan, Sunghun Kim
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引用次数: 451

摘要

已经提出了许多软件缺陷预测方法,并且大多数方法在项目内预测设置中是有效的。然而,对于新项目或训练数据有限的项目,最好是通过使用现有源项目中足够的训练数据来学习预测模型,然后将该模型应用于一些目标项目(跨项目缺陷预测)。不幸的是,跨项目缺陷预测的性能通常很差,很大程度上是因为源项目和目标项目之间的特征分布差异。在本文中,我们应用最先进的迁移学习方法,TCA,使源项目和目标项目中的特征分布相似。此外,我们提出了一种新的迁移缺陷学习方法——TCA+。我们对8个开源项目的实验结果表明,TCA+显著提高了跨项目的预测性能。
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Transfer defect learning
Many software defect prediction approaches have been proposed and most are effective in within-project prediction settings. However, for new projects or projects with limited training data, it is desirable to learn a prediction model by using sufficient training data from existing source projects and then apply the model to some target projects (cross-project defect prediction). Unfortunately, the performance of cross-project defect prediction is generally poor, largely because of feature distribution differences between the source and target projects. In this paper, we apply a state-of-the-art transfer learning approach, TCA, to make feature distributions in source and target projects similar. In addition, we propose a novel transfer defect learning approach, TCA+, by extending TCA. Our experimental results for eight open-source projects show that TCA+ significantly improves cross-project prediction performance.
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