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Examining the effectiveness of machine learning algorithms for prediction of change prone classes

机译:检查机器学习算法的有效性,以预测变化易于课程

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Managing change in the early stages of a software development life cycle is an effective strategy for developing a good quality software at low costs. In order to manage change, we use software quality models which can efficiently predict change prone classes and hence guide developers in appropriate distribution of limited resources. This study examines the effectiveness of ten machine learning algorithms for developing such software quality models on three object-oriented software data sets. We also compare the performance of machine learning algorithms with the widely used logistic regression technique and statistically rank various algorithms with the help of Friedman test.
机译:管理软件开发生命周期的早期阶段的变更是以低成本开发优质软件的有效策略。为了管理更改,我们使用软件质量模型,这些模型可以有效地预测变化普通类,因此在适当的有限资源分配中指导开发人员。本研究探讨了十种机器学习算法在三个面向对象的软件数据集中开发此类软件质量模型的有效性。我们还将机器学习算法与广泛使用的逻辑回归技术的性能进行了比较,并在弗里德曼测试的帮助下统计地排名各种算法。

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