Cross-project software defect prediction through multiple learning

Yahaya Zakariyau Bala, Pathiah Abdul Samat, Khaironi Yatim Sharif, N. Manshor
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引用次数: 2

Abstract

Cross-project defect prediction is a method that predicts defects in one software project by using the historical record of another software project. Due to distribution differences and the weak classifier used to build the prediction model, this method has poor prediction performance. Cross-project defect prediction may perform better if distribution differences are reduced, and an appropriate individual classifier is chosen. However, the prediction performance of individual classifiers may be affected in some way by their weaknesses. As a result, in order to boost the accuracy of cross-project defect prediction predictions, this study proposed a strategy that makes use of multiple classifiers and selects attributes that are similar to one another. The proposed method's efficacy was tested using the Relink and AEEEM datasets in an experiment. The findings of the experiments demonstrated that the proposed method produces superior outcomes. To further validate the method, we employed the Wilcoxon sum rank test at 95% significance level. The approach was found to perform significantly better than the baseline methods.
通过多重学习进行跨项目软件缺陷预测
跨项目缺陷预测是一种利用另一个软件项目的历史记录来预测一个软件项目缺陷的方法。由于分布差异和用于建立预测模型的分类器较弱,这种方法的预测性能较差。如果缩小分布差异,并选择合适的单个分类器,跨项目缺陷预测的性能可能会更好。但是,单个分类器的预测性能可能会受到其弱点的某种影响。因此,为了提高跨项目缺陷预测的准确性,本研究提出了一种利用多个分类器并选择彼此相似的属性的策略。在一项实验中,使用 Relink 和 AEEEM 数据集测试了所提方法的有效性。实验结果表明,所提出的方法产生了卓越的效果。为了进一步验证该方法,我们采用了 95% 显著性水平的 Wilcoxon 和秩检验。结果发现,该方法的性能明显优于基线方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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