CYSEFeb 14, 2017

Mining Behavioral Patterns from Millions of Android Users

arXiv:1702.05060v243 citations
AI Analysis

This provides insights for software engineering researchers and app developers, but it is incremental as it applies existing methods to a new dataset.

The authors tackled the problem of understanding mobile app usage by analyzing behavioral data from millions of Android users, resulting in patterns derived from app management activities and network usage across 0.28 million apps.

The prevalence of smart mobile devices has promoted the popularity of mobile applications (a.k.a. apps). Supporting mobility has become a promising trend in software engineering research. This article presents an empirical study of behavioral service profiles collected from millions of users whose devices are deployed with Wandoujia, a leading Android app store service in China. The dataset of Wandoujia service profiles consists of two kinds of user behavioral data from using 0.28 million free Android apps, including (1) app management activities (i.e., downloading, updating, and uninstalling apps) from over 17 million unique users and (2) app network usage from over 6 million unique users. We explore multiple aspects of such behavioral data and present patterns of app usage. Based on the findings as well as derived knowledge, we also suggest some new open opportunities and challenges that can be explored by the research community, including app development, deployment, delivery, revenue, etc.

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