首页> 外文会议>IEEE/ACM International Conference on Software Engineering: Software Engineering in Practice >Emerging App Issue Identification from User Feedback: Experience on WeChat
【24h】

Emerging App Issue Identification from User Feedback: Experience on WeChat

机译:来自用户反馈的新兴应用程序问题:微信的经验

获取原文

摘要

It is vital for popular mobile apps with large numbers of users to release updates with rich features while keeping stable user experience. Timely and accurately locating emerging app issues can greatly help developers to maintain and update apps. User feedback (i.e., user reviews) is a crucial channel between app developers and users, delivering a stream of information about bugs and features that concern users. Methods to identify emerging issues based on user feedback have been proposed in the literature, however, their applicability in industry has not been explored. We apply the recent method IDEA to WeChat, a popular messenger app with over 1 billion monthly active users, and find that the emerging issues detected by IDEA are not stable (i.e., due to its inherent randomness, its results change when run multiple times even for the same inputs), and there are other problems such as long running time. To address these limitations, we design a novel tool, named DIVER. Different from IDEA, DIVER is more efficient (it can report real-time alerts in seconds), generates reliable results, and most importantly, achieves higher accuracy in our practice. After its deployment on WeChat, DIVER successfully detected 18 emerging issues of WeChat's Android and iOS apps in one month. Additionally, DIVER significantly outperforms IDEA by 29.4% in precision and 32.5% in recall.
机译:对于具有大量用户的流行移动应用程序至关重要,以释放具有丰富功能的更新,同时保持稳定的用户体验。及时,准确地定位新兴应用程序问题可以极大地帮助开发人员维护和更新应用程序。用户反馈(即用户评论)是应用程序开发人员和用户之间的重要渠道,提供有关用户所关注的错误和功能的信息流。在文献中提出了基于用户反馈的新出现问题的方法,但是,他们在工业中的适用性尚未探讨。我们将最近的方法想到微信,一个流行的Messenger应用程序,超过10亿个月活跃的用户,发现由想法检测到的新兴问题不稳定(即,由于其固有的随机性,其结果在多次运行时变化即使对于相同的输入),并且还有其他问题,例如长时间的运行时间。为了解决这些限制,我们设计一个名为Diver的新型工具。与思想不同,潜水员更高效(它可以以秒为单位报告实时警报),产生可靠的结果,最重要的是,在我们的实践中实现更高的准确性。在维希特部署后,潜水员在一个月内成功地检测了丝克特的Android和iOS应用程序的18个新出现的问题。此外,潜水员显着优于29.4%的概念,精度为29.4%,召回32.5%。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号