开源软件中bug修复的概念复制研究

Haoren Wang, Huzefa H. Kagdi
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引用次数: 8

摘要

在大型软件系统中,bug主导着纠正性维护和进化性更改。关于bug的话题已经在文献中进行了广泛的调查和报道。不幸的是,“报告的错误是否会被修复”的存在性问题并没有得到太多的关注。本文对四个开源项目进行了实证研究,以检验影响bug修复可能性的因素。总的来说,我们的研究可以看作是对先前商业领域的微软系统研究的概念复制。讨论了两项研究在设计、执行和结果方面的异同。从这些系统中可以观察到,报告者和指定的开发人员修复它的声誉,以及对错误的评论数量对修复它的可能性有最实质性的影响。此外,我们根据可用的特性制定了一个预测模型,一旦报告了错误,就可以估计它是否会被修复。执行了项目内部和项目间(交叉)验证。精确度和召回率指标被用来评估预测模型。它们的值记录在60%到70%的范围内。
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A Conceptual Replication Study on Bugs that Get Fixed in Open Source Software
Bugs dominate the corrective maintenance and evolutionary changes in large-scale software systems. The topic of bugs has been extensively investigated and reported in the literature. Unfortunately, the existential question of all "whether a reported bug will be fixed or not" has not received much attention. The paper presents an empirical study on four open source projects to examine the factors that influence the likelihood of a bug getting fixed or not. Overall, our study can be contextualized as a conceptual replication of a previous study on Microsoft systems from a commercial domain. The similarities and differences in terms of the design, execution, and results between the two studies are discussed. It was observed from these systems that the reputations of the reporter and assigned developer to fix it, and the number of comments on a bug have the most substantial impact on its probability to get fixed. Moreover, we formulated a predictive model from features available as soon as a bug is reported to estimate whether it will be fixed or not. Intra and inter (cross) project validations were performed. Precision and Recall metrics were used to assess the predictive model. Their values were recorded in the 60% to 70% range.
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