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Building a Novel GP-Based Software Quality Classifier Using Multiple Validation Datasets

机译:使用多个验证数据集构建基于GP的新颖软件质量分类器

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One problem associated with software quality classification (SQC) modeling is that the historical metric dataset obtained from a single software project are often not adequate to build robust and accurate models. To address this issue, multiple datasets obtained from different software projects are used for sqc modeling in recent research works. Our previous study has demonstrated that using multiple datasets for validation can achieve robust genetic programming (GP)-based SQC models. This paper further investigates the effectiveness of using multiple validation datasets. Moreover, a novel GP-based classifier consisting of training, multiple-dataset validation, and voting phases, is proposed. The experiments are carried out on seven NASA software projects. The results are compared with the results achieved by seventeen other data mining techniques. The comparisons demonstrate that the performance of our approach is significantly better by using multiple datasets from different software projects with similar reliability goals.
机译:与软件质量分类(SQC)建模相关的一个问题是,从单个软件项目获得的历史度量数据集通常不足以构建健壮而准确的模型。为了解决这个问题,在最近的研究工作中,将从不同软件项目获得的多个数据集用于sqc建模。我们之前的研究表明,使用多个数据集进行验证可以实现基于健壮的遗传编程(GP)的SQC模型。本文进一步研究了使用多个验证数据集的有效性。此外,提出了一种新颖的基于GP的分类器,包括训练,多数据集验证和投票阶段。实验是在七个NASA软件项目上进行的。将结果与其他十七种数据挖掘技术获得的结果进行比较。比较结果表明,通过使用来自具有相似可靠性目标的不同软件项目的多个数据集,我们的方法的性能明显更好。

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