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An empirical evaluation of NASA-MDP data sets using a genetic defect-proneness prediction framework

机译:使用遗传缺陷倾向预测框架对NASA-MDP数据集进行实证评估

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In software engineering, software quality is an important research area. Automated generation of learning schemes plays an important role and represents an efficient way to detect defects in software projects, thus avoiding high costs and long delivery times. This study carries out an empirical evaluation to validate two versions with different levels of noise of NASA-MDP data sets. The main objective of this paper is to determine the stability of our framework. In all, 864 learning schemes were studied (8 data preprocessors × 6 attribute selectors × 18 learning algorithms). In line with statistical tests, our framework reported stable results between the analyzed versions. Results reported that evaluation and prediction phases were similar. Furthermore, the performance of the phases of evaluation and prediction between versions of data sets were stable. This means that the differences between versions did not affect the performance of our framework.
机译:在软件工程中,软件质量是重要的研究领域。自动生成学习方案起着重要作用,并且代表了一种检测软件项目中缺陷的有效方法,从而避免了高昂的成本和较长的交付时间。这项研究进行了实证评估,以验证具有不同噪声水平的NASA-MDP数据集的两个版本。本文的主要目的是确定我们框架的稳定性。总共研究了864个学习方案(8个数据预处理器×6个属性选择器×18个学习算法)。与统计测试一致,我们的框架报告了所分析版本之间的稳定结果。结果报告,评估和预测阶段相似。此外,数据集版本之间的评估和预测阶段的性能是稳定的。这意味着版本之间的差异不会影响我们框架的性能。

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