通过挖掘用户痕迹来检测移动应用程序中用户感知的故障

Deyu Tian
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引用次数: 0

摘要

如今,移动应用程序经常遭遇失败。开发人员通常更关注用户感知到的失败,并损害用户体验。现有的方法侧重于挖掘大量日志来检测故障,然而,据我们所知,没有一种方法侧重于检测用户是否实际感知到故障,这直接影响用户体验。在本文中,我们提出了一种检测移动应用程序中用户感知故障的新方法。通过利用前端用户跟踪,我们的方法首先构建应用程序页面模型,并应用无监督检测算法来检测用户是否感知到故障。我们对算法的理解是,当用户感知到应用页面出现故障时,用户会返回并重新访问某个页面进行重试。初步评估结果表明,我们的方法可以在从真实世界用户收集的数据集上获得良好的检测性能。
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Detecting User-Perceived Failure in Mobile Applications via Mining User Traces
Mobile applications (apps) often suffer from failure nowadays. Developers usually pay more attention to the failure that is perceived by users and compromises the user experience. Existing approaches focus on mining large volume logs to detect failure, however, to our best knowledge, there is no approach focusing on detecting whether users have actually perceived failure, which directly influence the user experience. In this paper, we propose a novel approach to detecting user-perceived failure in mobile apps. By leveraging the frontend user traces, our approach first builds an app page model, and applies an unsupervised detection algorithm to detect whether a user has perceived failure. Our insight behind the algorithm is that when user-perceived failure occurs on an app page, the users will backtrack and revisit the certain page to retry. Preliminary evaluation results show that our approach can achieve good detection performance on a dataset collected from real world users.
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