分层手机应用评论:基于热门“实体”发现的E-LDA模型

Y. Liu, Yanwei Li, Yanhui Guo, Miao Zhang
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引用次数: 5

摘要

最近的文献已经阐述了可以从嘈杂的手机应用评论中自动提取信息内容的方法,但是这些方法获取的关键信息(如功能请求、漏洞报告等)仍然是混合的,开发者仍然不知道用户真正关心的应用是什么。在本文中,我们提出了一个新的SAR模型:分层应用评论,为开发者提供关于用户对应用的真实反应的信息。SAR将信息评论分层为不同的层,根据用户关注的内容对评论进行分组,并且我们还开发了一种计算用户对每个实体的总体情绪的方法。该模型对原始评论进行面向用户的分析,首先从每条评论中提取实体,识别用户最关心的应用程序热点实体,然后使用四层贝叶斯概率方法根据热点实体将所有评论分层,最后计算用户对热点实体的情绪。我们对游戏、社交和媒体三种类型的应用程序进行了实验,结果表明,SAR可以根据应用程序的特定类别识别出不同的热门实体,并相应地将相关评论分层,每个实体的情感值也可以很好地代表用户的满意度,我们还将结果与人工分析进行了比较,在精度相似的情况下,SAR可以自动加快整体分析速度。我们的模型可以帮助开发者快速了解用户最关心的应用实体,以及他们对这些实体的反应。
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Stratify Mobile App Reviews: E-LDA Model Based on Hot "Entity" Discovery
Recent literatures have illustrated approaches that can automatically extract informative content from noisy mobile app reviews, however the key information such as feature requests, bug reports etc., retrieved by these methods are still mixed and what users really care about the app remains unknown to developers. In this paper we propose a novel model SAR: Stratify App Reviews, providing developers information about users' real reaction toward apps. SAR stratifies informative reviews into different layers, grouping the reviews based on what users concern, and we also develop a method to compute the user general sentiment on each entity. The model performs user-oriented analytics from raw reviews by (i) first extracting entities from each review, identifying hot entities of the app that users mostly care about, (ii) then stratifying all the reviews into different layers according to hot entities with a four-layer Bayes probability method, (iii) and finally computing user sentiments on hot entities. We conduct experiments on three genres of apps i.e. Games, Social, and Media, the result shows that SAR could identify different hot entities with respect to the specific categories of apps, and accordingly, it can stratify relevant reviews into different layers, the sentiment value of each entity can also represent users' satisfaction well, we also compared the result with human analysis, with the similar accuracy, the SAR can speed up the overall analysis automatically. Our model can help developers quickly understand what entities of the app users mostly care about, and how do they react to these entities.
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