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首页> 外文期刊>International Journal of Computational Science and Engineering >Automated labelling and severity prediction of software bug reports
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Automated labelling and severity prediction of software bug reports

机译:软件错误报告的自动标记和严重性预测

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摘要

Our main aim is to develop an intelligent classifier that is capable of predicting the severity and label (type) of a newly submitted bug report through a bug tracking system. For this purpose, we build two datasets that are based on 350 bug reports from the open-source community (Eclipse, Mozilla, and Gnome). These datasets are characterised with various textual features. Based on this information, we train variety of discriminative models that are used for automated labelling and severity prediction of a newly submitted bug report. A boosting algorithm is also implemented for an enhanced performance. The classification performance is measured using accuracy and a set of other measures. For automated labelling, the accuracy reaches around 91% with the AdaBoost algorithm and cross validation test. On the other hand, for severity prediction, the classification accuracy reaches around 67% with the AdaBoost algorithm and cross validation test. Overall, the results are encouraging.
机译:我们的主要目标是开发一个智能分类器,能够通过错误跟踪系统预测新提交的错误报告的严重性和标签(类型)。 为此目的,我们构建了两个基于350个错误报告的两个数据集(Eclipse,Mozilla和Gnome)。 这些数据集具有各种文本功能。 基于此信息,我们培养各种用于自动标签和自动标签和严重性预测的辨别模型。 还实现了增强性能的升压算法。 使用精度和一组其他措施测量分类性能。 对于自动标签,通过ADABOOST算法和交叉验证测试,精度达到约91%。 另一方面,对于严重程度预测,adaboost算法和交叉验证测试,分类精度达到67%左右。 总体而言,结果令人鼓舞。

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