用户喜欢这个功能吗?应用评论的细粒度情感分析

Emitzá Guzmán, W. Maalej
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引用次数: 552

摘要

应用商店允许用户以星级和文字评论的形式提交下载应用的反馈。最近的研究分析了这些反馈,发现它包含了对应用开发者有用的信息,如用户需求、改进想法、用户对特定功能的看法以及对这些功能的体验描述。然而,对于许多应用来说,评论数量太大,无法手工处理,而且评论的质量参差不齐。星级评级是针对整个应用的,开发者无法分析单个功能的反馈。在本文中,我们提出了一种自动化的方法来帮助开发人员过滤、聚合和分析用户评论。我们使用自然语言处理技术在评论中识别细粒度的应用功能。然后,我们提取用户对已识别特征的看法,并在所有评论中给它们一个总体分数。最后,我们使用主题建模技术将细粒度特征分组为更有意义的高级特征。我们用来自Apple App Store和Google Play Store的7款应用评估了我们的方法,并将其结果与手动的同行评论分析进行了比较。平均而言,我们的方法的精度为0.59,召回率为0.51。提取的特征是一致的,并且与需求演化任务相关。我们的方法可以帮助应用开发者系统地分析用户对单个功能的意见,并过滤不相关的评论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
How Do Users Like This Feature? A Fine Grained Sentiment Analysis of App Reviews
App stores allow users to submit feedback for downloaded apps in form of star ratings and text reviews. Recent studies analyzed this feedback and found that it includes information useful for app developers, such as user requirements, ideas for improvements, user sentiments about specific features, and descriptions of experiences with these features. However, for many apps, the amount of reviews is too large to be processed manually and their quality varies largely. The star ratings are given to the whole app and developers do not have a mean to analyze the feedback for the single features. In this paper we propose an automated approach that helps developers filter, aggregate, and analyze user reviews. We use natural language processing techniques to identify fine-grained app features in the reviews. We then extract the user sentiments about the identified features and give them a general score across all reviews. Finally, we use topic modeling techniques to group fine-grained features into more meaningful high-level features. We evaluated our approach with 7 apps from the Apple App Store and Google Play Store and compared its results with a manually, peer-conducted analysis of the reviews. On average, our approach has a precision of 0.59 and a recall of 0.51. The extracted features were coherent and relevant to requirements evolution tasks. Our approach can help app developers to systematically analyze user opinions about single features and filter irrelevant reviews.
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