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Application of Machine Learning on Process Metrics for Defect Prediction in Mobile Application

机译:机器学习在移动应用中缺陷预测过程度量的应用

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This paper studied process metrics in detail for predicting defects in an open source mobile applications in continuation with our previous study (Moser et al. Software Engineering, 2008). Advanced modeling techniques have been applied on a vast dataset of mobile applications for proving that process metrics are better predictor of defects than code metrics for mobile applications. Mean absolute error, Correlation Coefficient and root mean squared error are determined using different machine learning techniques. In each case it was concluded that process metrics as predictors are significantly better than code metrics as predictors for bug prediction. It is shown that process metrics based defect prediction models are better for mobile applications in all regression based techniques, machine learning techniques and neuro-fuzzy modelling. Therefore separate model has been created based on only process metrics with large dataset of mobile application.
机译:本文研究了处理指标,详细研究了在继续前进的研究中预测开源移动应用中的缺陷(Moser等人。软件工程,2008)。高级建模技术已应用于移动应用程序的大型数据集,以证明处理指标比移动应用程序的代码指标更好地预测缺陷。使用不同的机器学习技术来确定平均绝对误差,相关系数和均方方误差。在每种情况下,得出结论,作为预测器的过程度量值明显优于代码度量,作为错误预测的预测因素。结果表明,基于过程度量的缺陷预测模型在所有回归的技术,机器学习技术和神经模糊建模中更好地对移动应用更好。因此,已经仅基于具有移动应用程序的大型数据集的过程度量来创建单独的模型。

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