Lorenzo Villarroel, G. Bavota, B. Russo, R. Oliveto, M. D. Penta
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引用次数: 222
摘要
开发者必须通过修复关键漏洞和执行最理想的功能来不断改进他们的应用,以便在不断增长和竞争激烈的手机应用市场中获得份额。用户在应用商店留下的评论是规划此类活动的宝贵信息来源。然而,为了利用这些信息,开发人员需要手动分析这些评论。如果应用每天收到数百条评论,这是不可能的。在本文中,我们介绍了CLAP (Crowd Listener for releAse Planning),这是一种彻底的解决方案,可以(i)根据用户评论所执行的信息(例如,bug报告)对用户评论进行分类,(ii)将相关评论聚集在一起(例如,所有评论报告相同的bug),以及(iii)在规划后续应用发布时自动优先考虑要实施的评论集群。我们评估了CLAP背后的所有步骤,显示了它在分类和聚类评论方面的高准确性以及推荐优先级的意义。此外,考虑到CLAP作为工作工具的可用性,我们评估了它在工业环境中的实际适用性。
Release Planning of Mobile Apps Based on User Reviews
Developers have to to constantly improve their apps by fixing critical bugs and implementing the most desired features in order to gain shares in the continuously increasing and competitive market of mobile apps. A precious source of information to plan such activities is represented by reviews left by users on the app store. However, in order to exploit such information developers need to manually analyze such reviews. This is something not doable if, as frequently happens, the app receives hundreds of reviews per day. In this paper we introduce CLAP (Crowd Listener for releAse Planning), a thorough solution to (i) categorize user reviews based on the information they carry out (e.g., bug reporting), (ii) cluster together related reviews (e.g., all reviews reporting the same bug), and (iii) automatically prioritize the clusters of reviews to be implemented when planning the subsequent app release. We evaluated all the steps behind CLAP, showing its high accuracy in categorizing and clustering reviews and the meaningfulness of the recommended prioritizations. Also, given the availability of CLAP as a working tool, we assessed its practical applicability in industrial environments.