The Effect of the Dataset Size on the Accuracy of Software Defect Prediction Models: An Empirical Study

M. Alshayeb, Mashaan Alshammari
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引用次数: 3

Abstract

The ongoing development of computer systems requires massive software projects. Running the components of these huge projects for testing purposes might be a costly process; therefore, parameter estimation can be used instead. Software defect prediction models are crucial for software quality assurance. This study investigates the impact of dataset size and feature selection algorithms on software defect prediction models. We use two approaches to build software defect prediction models: a statistical approach and a machine learning approach with support vector machines (SVMs). The fault prediction model was built based on four datasets of different sizes. Additionally, four feature selection algorithms were used. We found that applying the SVM defect prediction model on datasets with a reduced number of measures as features may enhance the accuracy of the fault prediction model. Also, it directs the test effort to maintain the most influential set of metrics. We also found that the running time of the SVM fault prediction model is not consistent with dataset size. Therefore, having fewer metrics does not guarantee a shorter execution time. From the experiments, we found that dataset size has a direct influence on the SVM fault prediction model. However, reduced datasets performed the same or slightly lower than the original datasets.
数据集大小对软件缺陷预测模型准确性影响的实证研究
计算机系统的持续发展需要大量的软件项目。为了测试目的而运行这些大型项目的组件可能是一个昂贵的过程;因此,可以使用参数估计代替。软件缺陷预测模型是软件质量保证的关键。本研究探讨了数据集大小和特征选择算法对软件缺陷预测模型的影响。我们使用两种方法来构建软件缺陷预测模型:统计方法和支持向量机(svm)的机器学习方法。基于4个不同规模的数据集,建立了故障预测模型。此外,还使用了四种特征选择算法。研究发现,将SVM缺陷预测模型应用于以较少测度为特征的数据集上,可以提高故障预测模型的准确性。此外,它指导测试工作以维护最具影响力的度量标准集。我们还发现SVM故障预测模型的运行时间与数据集大小不一致。因此,拥有更少的指标并不能保证更短的执行时间。实验结果表明,数据集大小对SVM故障预测模型有直接影响。然而,简化后的数据集的性能与原始数据集相同或略低。
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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