Clustering Mobile Apps Based on Mined Textual Features

A. Al-Subaihin, Federica Sarro, S. Black, L. Capra, M. Harman, Yue Jia, Yuanyuan Zhang
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引用次数: 67

Abstract

Context: Categorising software systems according to their functionality yields many benefits to both users and developers. Goal: In order to uncover the latent clustering of mobile apps in app stores, we propose a novel technique that measures app similarity based on claimed behaviour. Method: Features are extracted using information retrieval augmented with ontological analysis and used as attributes to characterise apps. These attributes are then used to cluster the apps using agglomerative hierarchical clustering. We empirically evaluate our approach on 17,877 apps mined from the BlackBerry and Google app stores in 2014. Results: The results show that our approach dramatically improves the existing categorisation quality for both Blackberry (from 0.02 to 0.41 on average) and Google (from 0.03 to 0.21 on average) stores. We also find a strong Spearman rank correlation (ρ= 0.96 for Google and ρ= 0.99 for BlackBerry) between the number of apps and the ideal granularity within each category, indicating that ideal granularity increases with category size, as expected. Conclusions: Current categorisation in the app stores studied do not exhibit a good classification quality in terms of the claimed feature space. However, a better quality can be achieved using a good feature extraction technique and a traditional clustering method.
基于挖掘文本特征的移动应用聚类
上下文:根据功能对软件系统进行分类,对用户和开发人员都有很多好处。目标:为了揭示应用商店中手机应用的潜在聚类,我们提出了一种基于声称的行为来衡量应用相似性的新技术。方法:利用信息检索与本体分析相结合的方法提取特征,并将特征作为应用程序特征的属性。然后使用这些属性来使用聚合分层聚类对应用程序进行聚类。我们对2014年从黑莓和谷歌应用商店中挖掘的17877款应用进行了实证评估。结果:结果表明,我们的方法显著提高了黑莓(从平均0.02到0.41)和谷歌(从平均0.03到0.21)商店现有的分类质量。我们还发现,在每个类别中,应用数量与理想粒度之间存在很强的Spearman秩相关性(谷歌ρ= 0.96,黑莓ρ= 0.99),这表明理想粒度随着类别规模的增加而增加,正如预期的那样。结论:根据所研究的应用商店的分类,就所声称的功能空间而言,目前的分类质量并不好。然而,使用良好的特征提取技术和传统的聚类方法可以获得更好的质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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