Severity prediction of software bugs

A. Otoom, Doaa Al-Shdaifat, M. Hammad, E. Abdallah
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引用次数: 21

Abstract

We target the problem of identifying the severity of a bug report. Our main aim is to develop an intelligent system that is capable of predicting the severity of a newly submitted bug report through a bug tracking system. For this purpose, we build a dataset consisting of 59 features characterizing 163 instances that belong to two classes: severe and non-severe. We combine the proposed feature set with strong classification algorithms to assist in predicting the severity of bugs. Moreover, the proposed algorithms are integrated within a boosting algorithm for an enhanced performance. Our results show that the proposed technique has proved successful with a classification performance accuracy of more than 76% with the AdaBoost algorithm and cross validation test. Moreover, boosting has been effective in enhancing the performance of its base classifiers with improvements of up to 4.9%.
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软件bug的严重程度预测
我们的目标是识别错误报告的严重性。我们的主要目标是开发一个智能系统,能够通过bug跟踪系统预测新提交的bug报告的严重性。为此,我们构建了一个由59个特征组成的数据集,这些特征表征了163个实例,这些实例属于两个类别:严重和非严重。我们将提出的特征集与强分类算法相结合,以帮助预测错误的严重程度。此外,所提出的算法集成在一个提升算法中,以提高性能。通过AdaBoost算法和交叉验证测试,我们的结果表明,该技术是成功的,分类性能准确率超过76%。此外,增强有效地提高了其基分类器的性能,改进幅度高达4.9%。
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