Assessment and Prediction of Software Reliability in Mobile Applications

Osama Barack, LiGuo Huang
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引用次数: 9

Abstract

Software reliability is an important quality attribute, and software reliability models are frequently used to measure and predict software maturity. The nature of mobile environments differs from that of PC and server environments due to many factors, such as the network, energy, battery, and compatibility. Evaluating and predicting mobile application reliability are real challenges because of the diversity of the mobile environments in which the applications are used, and the lack of publicly available defect data. In addition, bug reports are optionally submitted by end-users. In this paper, we propose assessing and predicting the reliability of a mobile application using known software reliability growth models (SRGMs). Four software reliability models are used to evaluate the reliability of an open-source mobile application through analyzing bug reports. Our experiment proves it is possible to use SRGMs with defect data acquired from bug reports to assess and predict the software reliability in mobile applications. The results of our work enable software developers and testers to assess and predict the reliability of mobile software applications.
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移动应用软件可靠性评估与预测
软件可靠性是一个重要的质量属性,软件可靠性模型经常被用来衡量和预测软件成熟度。移动环境的性质与PC和服务器环境的性质不同,这是由于许多因素造成的,如网络、能源、电池和兼容性。评估和预测移动应用程序的可靠性是真正的挑战,因为应用程序使用的移动环境的多样性,以及缺乏公开可用的缺陷数据。此外,最终用户可以选择提交错误报告。在本文中,我们建议使用已知的软件可靠性增长模型(SRGM)来评估和预测移动应用程序的可靠性。通过分析错误报告,使用四个软件可靠性模型来评估开源移动应用程序的可靠性。我们的实验证明,使用SRGM和从错误报告中获得的缺陷数据来评估和预测移动应用程序中的软件可靠性是可能的。我们的工作结果使软件开发人员和测试人员能够评估和预测移动软件应用程序的可靠性。
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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