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An Outlier Detection Algorithm Based on Object-Oriented Metrics Thresholds

机译:一种基于面向对象度量阈值的异常检测算法

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Detection of outliers in software measurement datasets is a critical issue that affects the performance of software fault prediction models built based on these datasets. Two necessary components of fault prediction models, software metrics and fault data, are collected from the software projects developed with object-oriented programming paradigm. We proposed an outlier detection algorithm based on these kinds of metrics thresholds. We used Random Forests machine learning classifier on two software measurement datasets collected from jEdit open-source text editor project and experiments revealed that our outlier detection approach improves the performance of fault predictors based on Random Forests classifier.
机译:检测软件测量数据集中的异常值是影响基于这些数据集构建的软件故障预测模型的性能的关键问题。从面向对象编程范例开发的软件项目中收集了故障预测模型,软件度量和故障数据的两个必要组件。我们提出了一种基于这些度量阈值的异常检测算法。我们使用随机森林机器学习分类器,从JEDIT开源文本编辑器项目中收集的两个软件测量数据集和实验表明,我们的异常检测方法提高了基于随机林分类器的故障预测器的性能。

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