Just-in-Time crash prediction for mobile apps

IF 3.5 2区 计算机科学 Q1 COMPUTER SCIENCE, SOFTWARE ENGINEERING Empirical Software Engineering Pub Date : 2024-05-08 DOI:10.1007/s10664-024-10455-7
Chathrie Wimalasooriya, Sherlock A. Licorish, Daniel Alencar da Costa, Stephen G. MacDonell
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Abstract

Just-In-Time (JIT) defect prediction aims to identify defects early, at commit time. Hence, developers can take precautions to avoid defects when the code changes are still fresh in their minds. However, the utility of JIT defect prediction has not been investigated in relation to crashes of mobile apps. We therefore conducted a multi-case study employing both quantitative and qualitative analysis. In the quantitative analysis, we used machine learning techniques for prediction. We collected 113 reliability-related metrics for about 30,000 commits from 14 Android apps and selected 14 important metrics for prediction. We found that both standard JIT metrics and static analysis warnings are important for JIT prediction of mobile app crashes. We further optimized prediction performance, comparing seven state-of-the-art defect prediction techniques with hyperparameter optimization. Our results showed that Random Forest is the best performing model with an AUC-ROC of 0.83. In our qualitative analysis, we manually analysed a sample of 642 commits and identified different types of changes that are common in crash-inducing commits. We explored whether different aspects of changes can be used as metrics in JIT models to improve prediction performance. We found these metrics improve the prediction performance significantly. Hence, we suggest considering static analysis warnings and Android-specific metrics to adapt standard JIT defect prediction models for a mobile context to predict crashes. Finally, we provide recommendations to bridge the gap between research and practice and point to opportunities for future research.

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移动应用程序的即时崩溃预测
即时缺陷预测(JIT)的目的是在提交时尽早发现缺陷。因此,开发人员可以在对代码更改记忆犹新时采取预防措施,避免出现缺陷。然而,JIT 缺陷预测在移动应用程序崩溃方面的实用性尚未得到研究。因此,我们采用定量和定性分析方法进行了一项多案例研究。在定量分析中,我们使用了机器学习技术进行预测。我们从 14 个 Android 应用程序的约 30,000 次提交中收集了 113 个可靠性相关指标,并选择了 14 个重要指标进行预测。我们发现,标准 JIT 指标和静态分析警告对于 JIT 预测移动应用程序崩溃都很重要。我们进一步优化了预测性能,通过超参数优化比较了七种最先进的缺陷预测技术。结果表明,随机森林是性能最好的模型,AUC-ROC 为 0.83。在定性分析中,我们手动分析了 642 个提交样本,并确定了导致崩溃的提交中常见的不同变更类型。我们探讨了是否可以将不同方面的变更作为 JIT 模型的衡量指标,以提高预测性能。我们发现这些指标能显著提高预测性能。因此,我们建议考虑静态分析警告和特定于 Android 的指标,以调整标准 JIT 缺陷预测模型,使其适用于移动环境,从而预测崩溃。最后,我们提出了弥合研究与实践之间差距的建议,并指出了未来研究的机遇。
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来源期刊
Empirical Software Engineering
Empirical Software Engineering 工程技术-计算机:软件工程
CiteScore
8.50
自引率
12.20%
发文量
169
审稿时长
>12 weeks
期刊介绍: Empirical Software Engineering provides a forum for applied software engineering research with a strong empirical component, and a venue for publishing empirical results relevant to both researchers and practitioners. Empirical studies presented here usually involve the collection and analysis of data and experience that can be used to characterize, evaluate and reveal relationships between software development deliverables, practices, and technologies. Over time, it is expected that such empirical results will form a body of knowledge leading to widely accepted and well-formed theories. The journal also offers industrial experience reports detailing the application of software technologies - processes, methods, or tools - and their effectiveness in industrial settings. Empirical Software Engineering promotes the publication of industry-relevant research, to address the significant gap between research and practice.
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