An Empirical Investigation into the Reproduction of Bug Reports for Android Apps

Jack S. Johnson, Junayed Mahmud, Tyler Wendland, Kevin Moran, J. Rubin, M. Fazzini
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引用次数: 7

Abstract

One of the key tasks related to ensuring mobile app quality is the reporting, management, and resolution of bug reports. As such, researchers have committed considerable resources toward automating various tasks of the bug management process for mobile apps, such as reproduction and triaging. However, the success of these automated approaches is largely dictated by the characteristics and properties of the bug reports they operate upon. As such, understanding mobile app bug reports is imperative to drive the continued advancement of report management techniques. While prior studies have examined high-level statistics of large sets of reports, we currently lack an in-depth investigation of how the information typically reported in mobile app issue trackers relates to the specific details generally required to reproduce the underlying failures. In this paper, we perform an in-depth analysis of 180 re-producible bug reports systematically mined from Android apps on GitHub and investigate how the information contained in the reports relates to the task of reproducing the described bugs. In our analysis, we focus on three pieces of information: the environment needed to reproduce the bug report, the steps to reproduce (S2Rs), and the observed behavior. Focusing on this information, we characterize failure types, identify the modality used to report the information, and characterize the quality of the information within the reports. We find that bugs are reported in a multi-modal fashion, the environment is not always provided, and S2Rs often contain missing or non-specific enough information. These findings carry with them important implications on automated bug reproduction techniques as well as automated bug report management approaches more generally.
Android应用程序Bug报告再现的实证研究
确保手机应用质量的关键任务之一是报告、管理和解决漏洞报告。因此,研究人员已经投入了相当多的资源来自动化移动应用程序的各种错误管理过程,例如复制和分类。然而,这些自动化方法的成功很大程度上取决于它们所操作的bug报告的特征和属性。因此,了解手机应用程序的bug报告对于推动报告管理技术的持续发展是必不可少的。虽然之前的研究已经检查了大量报告的高级统计数据,但我们目前缺乏对移动应用问题跟踪器中通常报告的信息与重现潜在故障所需的具体细节之间的关系的深入调查。在本文中,我们对GitHub上系统地从Android应用程序中挖掘的180个可重现的bug报告进行了深入分析,并调查了报告中包含的信息与重现所描述的bug的任务之间的关系。在我们的分析中,我们关注三个信息:重现错误报告所需的环境、重现的步骤(S2Rs)和观察到的行为。关注这些信息,我们描述故障类型,确定用于报告信息的模式,并描述报告中信息的质量。我们发现bug是以多模式的方式报告的,环境并不总是提供的,并且S2Rs通常包含缺失或不特定的足够信息。这些发现对自动化错误再现技术以及更普遍的自动化错误报告管理方法具有重要的意义。
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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