软件Bug报告的自动分类

A. Otoom, Sara Al-jdaeh, M. Hammad
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引用次数: 16

摘要

我们针对软件bug报告的分类问题。我们的主要目标是构建一个分类器,它能够将新传入的错误报告分类为两个预定义的类:纠正(缺陷修复)报告和完善(主要维护)报告。这有助于维护人员快速理解这些bug报告,从而为每个类别分配资源。为此,我们提出了一个基于某些关键字出现的独特特征集。然后将提出的特征集输入到许多分类算法中,以构建分类模型。所提出的特征集的分类结果具有较高的准确率,SVM分类算法在三个不同的开源项目上的平均准确率为93.1%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated Classification of Software Bug Reports
We target the problem of software bug reports classification. Our main aim is to build a classifier that is capable of classifying newly incoming bug reports into two predefined classes: corrective (defect fixing) report and perfective (major maintenance) report. This helps maintainers to quickly understand these bug reports and hence, allocate resources for each category. For this purpose, we propose a distinctive feature set that is based on the occurrences of certain keywords. The proposed feature set is then fed into a number of classification algorithms for building a classification model. The results of the proposed feature set achieved high accuracy in classification with SVM classification algorithm reporting an average accuracy of (93.1%) on three different open source projects.
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