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An empirical analysis of the statistical learning models for different categories of cross-project defect prediction

机译:不同类别的交叉项目缺陷预测统计学习模型的实证分析

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摘要

Currently, the research community is addressing the problem of defect prediction with the availability of project defect data. The availability of different project data leads to extend the research on cross projects. Cross-project defect prediction has now become an accepted area of software project management. In this paper, an empirical study is carried out to investigate the predictive performance of availability within project and cross-project defect prediction models. Furthermore, different categories of cross-project data are taken for training and testing to analyse various statistical models. In this paper data models are analysed and compared using various statistical performance measures. The findings during the empirical analysis of the data models state that gradient boosting predictor outperforms in the cross-project defect prediction scenario. Results also infer that cross-project defect prediction is comparable with project defect prediction and has statistical significance.
机译:目前,研究界正在解决项目缺陷数据的可用性缺陷预测问题。不同项目数据的可用性导致跨项目扩展了研究。交叉项目缺陷预测现已成为软件项目管理的已接受区域。在本文中,进行了实证研究,以研究项目和跨项目缺陷预测模型内的可用性的预测性能。此外,采用不同类别的交叉项目数据进行培训和测试,以分析各种统计模型。在本文中,通过各种统计性能措施进行分析和比较数据模型。数据模型的实证分析中的发现在跨项目缺陷预测方案中梯度升压预测偏差。结果还推断交叉项目缺陷预测与项目缺陷预测相当,具有统计学意义。

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