用于缺陷预测的静态代码属性的多元分析

Burak Turhan, A. Bener
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引用次数: 51

摘要

为了通过有效地分配有价值的测试资源来减少测试时间,缺陷预测是非常重要的。在这项工作中,我们提出了一个使用多变量方法结合贝叶斯方法进行缺陷预测的模型。使用多变量方法背后的动机是克服关于软件属性的单变量方法的独立性假设。使用贝叶斯方法可以让实践者在概率框架中了解软件模块的缺陷,而不是像决策树这样的硬分类方法。此外,本工作中使用的软件属性是在易于从源代码中提取的静态代码属性中选择的,从而防止了人为错误或主观性。使用特征选择技术对这些属性进行预处理,以选择最相关的属性进行预测。最后,我们将我们提出的模型与迄今为止在公共数据集上报告的最佳结果进行了比较,我们得出结论,使用多变量方法可以表现得更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Multivariate Analysis of Static Code Attributes for Defect Prediction
Defect prediction is important in order to reduce test times by allocating valuable test resources effectively. In this work, we propose a model using multivariate approaches in conjunction with Bayesian methods for defect predictions. The motivation behind using a multivariate approach is to overcome the independence assumption of univariate approaches about software attributes. Using Bayesian methods gives practitioners an idea about the defectiveness of software modules in a probabilistic framework rather than the hard classification methods such as decision trees. Furthermore the software attributes used in this work are chosen among the static code attributes that can easily be extracted from source code, which prevents human errors or subjectivity. These attributes are preprocessed with feature selection techniques to select the most relevant attributes for prediction. Finally we compared our proposed model with the best results reported so far on public datasets and we conclude that using multivariate approaches can perform better.
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