Identifying Key Features from App User Reviews

Huayao Wu, Wenjun Deng, Xintao Niu, Changhai Nie
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引用次数: 23

Abstract

Due to the rapid growth and strong competition of mobile application (app) market, app developers should not only offer users with attractive new features, but also carefully maintain and improve existing features based on users' feedbacks. User reviews indicate a rich source of information to plan such feature maintenance activities, and it could be of great benefit for developers to evaluate and magnify the contribution of specific features to the overall success of their apps. In this study, we refer to the features that are highly correlated to app ratings as key features, and we present KEFE, a novel approach that leverages app description and user reviews to identify key features of a given app. The application of KEFE especially relies on natural language processing, deep machine learning classifier, and regression analysis technique, which involves three main steps: 1) extracting feature-describing phrases from app description; 2) matching each app feature with its relevant user reviews; and 3) building a regression model to identify features that have significant relationships with app ratings. To train and evaluate KEFE, we collect 200 app descriptions and 1,108,148 user reviews from Chinese Apple App Store. Experimental results demonstrate the effectiveness of KEFE in feature extraction, where an average F-measure of 78.13% is achieved. The key features identified are also likely to provide hints for successful app releases, as for the releases that receive higher app ratings, 70% of features improvements are related to key features.
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从应用用户评论中识别关键功能
由于移动应用市场的快速增长和激烈竞争,应用开发者不仅要为用户提供有吸引力的新功能,还要根据用户的反馈仔细维护和改进现有功能。用户评论为计划功能维护活动提供了丰富的信息来源,这对开发者评估和放大特定功能对应用整体成功的贡献大有裨益。在本研究中,我们将与应用评级高度相关的特征称为关键特征,并提出了KEFE,这是一种利用应用描述和用户评论来识别给定应用的关键特征的新方法。KEFE的应用尤其依赖于自然语言处理、深度机器学习分类器和回归分析技术,主要包括三个步骤:1)从应用描述中提取特征描述短语;2)将每个应用功能与其相关的用户评论进行匹配;3)建立回归模型以识别与应用评级有显著关系的功能。为了训练和评估KEFE,我们从中国苹果应用商店收集了200个应用描述和1108148个用户评论。实验结果证明了KEFE在特征提取中的有效性,平均f值达到78.13%。确定的关键功能也可能为成功的应用发布提供线索,因为在获得较高应用评级的发布中,70%的功能改进与关键功能有关。
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