Towards Semi-automatic Bug Triage and Severity Prediction Based on Topic Model and Multi-feature of Bug Reports

Geunseok Yang, Zhang Tao, Byungjeong Lee
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引用次数: 92

Abstract

Bug fixing is an essential activity in the software maintenance, because most of the software systems have unavoidable defects. When new bugs are submitted, triagers have to find and assign appropriate developers to fix the bugs. However, if the bugs are at first assigned to inappropriate developers, they may later have to be reassigned to other developers. That increases the time and cost for fixing bugs. Therefore, finding appropriate developers becomes a key to bug resolution. When triagers assign a new bug report, it is necessary to decide how quickly the bug report should be addressed. Thus, the bug severity is an important factor in bug fixing. In this paper, we propose a novel method for the bug triage and bug severity prediction. First, we extract topic(s) from historical bug reports in the bug repository and find bug reports related to each topic. When a new bug report arrives, we decide the topic(s) to which the report belongs. Then we utilize multi-feature to identify corresponding reports that have the same multi-feature (e.g., Component, product, priority and severity) with the new bug report. Thus, given a new bug report, we are able to recommend the most appropriate developer to fix each bug and predict its severity. To evaluate our approach, we not only measured the effectiveness of our study by using about 30,000 golden bug reports extracted from three open source projects (Eclipse, Mozilla, and Net beans), but also compared some related studies. The results show that our approach is likely to effectively recommend the appropriate developer to fix the given bug and predict its severity.
基于主题模型和Bug报告多特征的半自动Bug分类和严重性预测
由于大多数软件系统都存在不可避免的缺陷,Bug修复是软件维护中必不可少的一项活动。当提交新的bug时,triager必须找到并分配合适的开发人员来修复这些bug。然而,如果错误一开始被分配给了不合适的开发人员,那么它们以后可能不得不被重新分配给其他开发人员。这增加了修复漏洞的时间和成本。因此,找到合适的开发人员成为解决bug的关键。当triager分配一个新的错误报告时,有必要决定该错误报告的处理速度。因此,bug的严重性是bug修复中的一个重要因素。在本文中,我们提出了一种新的错误分类和错误严重程度预测方法。首先,我们从bug存储库中的历史bug报告中提取主题,并找到与每个主题相关的bug报告。当一个新的错误报告到达时,我们决定报告所属的主题。然后,我们利用多特征来识别与新bug报告具有相同多特征(例如,组件、产品、优先级和严重性)的相应报告。因此,给定一个新的错误报告,我们能够推荐最合适的开发人员来修复每个错误并预测其严重性。为了评估我们的方法,我们不仅通过使用从三个开放源码项目(Eclipse、Mozilla和Net beans)中提取的大约30,000个金bug报告来衡量我们研究的有效性,而且还比较了一些相关的研究。结果表明,我们的方法可能有效地推荐适当的开发人员来修复给定的错误并预测其严重性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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