New features for duplicate bug detection

Nathan Klein, Christopher S. Corley, Nicholas A. Kraft
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引用次数: 28

Abstract

Issue tracking software of large software projects receive a large volume of issue reports each day. Each of these issues is typically triaged by hand, a time consuming and error prone task. Additionally, issue reporters lack the necessary understanding to know whether their issue has previously been reported. This leads to issue trackers containing a lot of duplicate reports, adding complexity to the triaging task. Duplicate bug report detection is designed to aid developers by automatically grouping bug reports concerning identical issues. Previous work by Alipour et al. has shown that the textual, categorical, and contextual information of an issue report are effective measures in duplicate bug report detection. In our work, we extend previous work by introducing a range of metrics based on the topic distribution of the issue reports, relying only on data taken directly from bug reports. In particular, we introduce a novel metric that measures the first shared topic between two topic-document distributions. This paper details the evaluation of this group of pair-based metrics with a range of machine learning classifiers, using the same issues used by Alipour et al. We demonstrate that the proposed metrics show a significant improvement over previous work, and conclude that the simple metrics we propose should be considered in future studies on bug report deduplication, as well as for more general natural language processing applications.
重复错误检测的新特性
大型软件项目的问题跟踪软件每天都会收到大量的问题报告。这些问题通常都是手工分类的,这是一项耗时且容易出错的任务。此外,问题报告者缺乏必要的理解,无法知道他们的问题之前是否被报告过。这将导致问题跟踪器包含大量重复的报告,从而增加了分类任务的复杂性。重复错误报告检测的目的是帮助开发人员自动分组有关相同问题的错误报告。Alipour等人之前的工作表明,问题报告的文本、分类和上下文信息是检测重复错误报告的有效措施。在我们的工作中,我们通过引入一系列基于问题报告的主题分布的度量来扩展之前的工作,仅依赖于直接从bug报告中获取的数据。特别地,我们引入了一个新的度量,用于度量两个主题文档分布之间的第一个共享主题。本文使用Alipour等人使用的相同问题,详细介绍了使用一系列机器学习分类器对这组基于成对的指标的评估。我们证明了所建议的度量标准比以前的工作有了显著的改进,并得出结论,我们提出的简单度量标准应该在未来关于bug报告重复数据删除的研究以及更一般的自然语言处理应用程序中加以考虑。
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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