OASIS:基于应用用户评论为Android应用设置静态分析警告优先级

Lili Wei, Yepang Liu, S. Cheung
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引用次数: 24

摘要

Lint是一个广泛使用的静态分析器,用于检测Android应用程序中的错误/问题。然而,它可能产生许多错误警告。这个问题的一个现有解决方案是利用项目历史数据(例如,bug修复统计数据)来确定警告的优先级。不幸的是,这种技术偏向于项目的存档警告,很容易错过新问题。另一个缺点是,开发人员不能很容易地将警告与用户可感知的影响联系起来。为了克服这些弱点,在本文中,我们提出了一种语义感知方法OASIS,通过利用应用程序用户评论来优先考虑Lint警告。OASIS结合了程序分析和NLP技术来恢复给定应用程序的Lint警告和用户对应用程序问题的投诉之间的内在联系。OASIS利用这种链接的强度来确定警告的优先级。我们在六个流行的大型开源Android应用上对OASIS进行了评估。结果表明,OASIS可以有效地确定Lint警告的优先级,并帮助识别应用程序开发人员以前不知道的新问题。
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OASIS: prioritizing static analysis warnings for Android apps based on app user reviews
Lint is a widely-used static analyzer for detecting bugs/issues in Android apps. However, it can generate many false warnings. One existing solution to this problem is to leverage project history data (e.g., bug fixing statistics) for warning prioritization. Unfortunately, such techniques are biased toward a project’s archived warnings and can easily miss newissues. Anotherweakness is that developers cannot readily relate the warnings to the impacts perceivable by users. To overcome these weaknesses, in this paper, we propose a semantics-aware approach, OASIS, to prioritizing Lint warnings by leveraging app user reviews. OASIS combines program analysis and NLP techniques to recover the intrinsic links between the Lint warnings for a given app and the user complaints on the app problems caused by the issues of concern. OASIS leverages the strength of such links to prioritize warnings. We evaluated OASIS on six popular and large-scale open-source Android apps. The results show that OASIS can effectively prioritize Lint warnings and help identify new issues that are previously-unknown to app developers.
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