连接跨版本的软件度量来预测缺陷

Yibin Liu, Yanhui Li, Jianbo Guo, Yuming Zhou, Baowen Xu
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引用次数: 29

摘要

准确的软件缺陷预测可以帮助软件从业者有效地将测试资源分配给容易出现缺陷的模块。在过去的几十年里,已经投入了大量的工作来构建准确的缺陷预测模型,包括开发质量缺陷预测器和建模技术。然而,当前广泛使用的缺陷预测器,如代码度量和过程度量,不能很好地描述软件模块在项目发展过程中是如何变化的,我们认为这对于缺陷预测是很重要的。为了解决这一问题,本文提出在连续软件版本中使用度量的历史版本序列(HVSM)作为缺陷预测因子。此外,我们利用递归神经网络(RNN),一种流行的建模技术,以HVSM作为输入来构建软件预测模型。实验结果表明,在大多数情况下,基于hvsm的RNN模型比常用的基线模型具有更好的努力感知排序效果。
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Connecting software metrics across versions to predict defects
Accurate software defect prediction could help software practitioners allocate test resources to defect-prone modules effectively and efficiently. In the last decades, much effort has been devoted to build accurate defect prediction models, including developing quality defect predictors and modeling techniques. However, current widely used defect predictors such as code metrics and process metrics could not well describe how software modules change over the project evolution, which we believe is important for defect prediction. In order to deal with this problem, in this paper, we propose to use the Historical Version Sequence of Metrics (HVSM) in continuous software versions as defect predictors. Furthermore, we leverage Recurrent Neural Network (RNN), a popular modeling technique, to take HVSM as the input to build software prediction models. The experimental results show that, in most cases, the proposed HVSM-based RNN model has significantly better effort-aware ranking effectiveness than the commonly used baseline models.
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