基于简化深度森林模型的Android移动应用实时缺陷预测

Kunsong Zhao, Zhou Xu, Tao Zhang, Yutian Tang
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引用次数: 14

摘要

移动设备的普及导致了移动应用数量的爆炸式增长,其中Android移动应用是主流。由于用户提出了新的需求,Android手机应用通常会频繁更新。即时(JIT)缺陷预测适用于这种质量保证场景,因为它可以通过确定新代码提交是否会将缺陷引入应用程序来提供及时的反馈。由于缺陷预测的性能通常依赖于数据表示的质量和使用的分类模型,在这项工作中,我们修改了一个最先进的模型,称为简化深度森林(SDF)来对Android移动应用程序进行JIT缺陷预测。该方法使用具有集成森林的级联结构进行表示学习和分类。我们在10个Android手机应用上进行了实验,实验结果表明SDF在三个性能指标上都明显优于对比方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Simplified Deep Forest Model based Just-In-Time Defect Prediction for Android Mobile Apps
The popularity of mobile devices has led to an explosive growth in the number of mobile apps in which Android mobile apps are the mainstream. Android mobile apps usually undergo frequent update due to new requirements proposed by users. Just-In-Time (JIT) defect prediction is appropriate for this scenario for quality assurance because it can provide timely feedback by determining whether a new code commit will introduce defects into the apps. As defect prediction performance usually relies on the quality of the data representation and the used classification model, in this work, we modify a state-of-the-art model, called Simplified Deep Forest (SDF) to conduct JIT defect prediction for Android mobile apps. This method uses a cascade structure with ensemble forests for representation learning and classification. We conduct experiments on 10 Android mobile apps and experimental results show that SDF performs significantly better than comparative methods in terms of three performance indicators.
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