Discovering different kinds of smartphone users through their application usage behaviors

Sha Zhao, Julian Ramos, Jianrong Tao, Ziwen Jiang, Shijian Li, Zhaohui Wu, Gang Pan, A. Dey
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引用次数: 131

Abstract

Understanding smartphone users is fundamental for creating better smartphones, and improving the smartphone usage experience and generating generalizable and reproducible research. However, smartphone manufacturers and most of the mobile computing research community make a simplifying assumption that all smartphone users are similar or, at best, constitute a small number of user types, based on their behaviors. Manufacturers design phones for the broadest audience and hope they work for all users. Researchers mostly analyze data from smartphone-based user studies and report results without accounting for the many different groups of people that make up the user base of smartphones. In this work, we challenge these elementary characterizations of smartphone users and show evidence of the existence of a much more diverse set of users. We analyzed one month of application usage from 106,762 Android users and discovered 382 distinct types of users based on their application usage behaviors, using our own two-step clustering and feature ranking selection approach. Our results have profound implications on the reproducibility and reliability of mobile computing studies, design and development of applications, determination of which apps should be pre-installed on a smartphone and, in general, on the smartphone usage experience for different types of users.
通过智能手机用户的应用使用行为发现不同类型的智能手机用户
了解智能手机用户是创造更好的智能手机、改善智能手机使用体验和产生可推广和可重复的研究的基础。然而,智能手机制造商和大多数移动计算研究社区做出了一个简化的假设,即所有智能手机用户都是相似的,或者,根据他们的行为,最多构成一小部分用户类型。制造商为最广泛的受众设计手机,并希望它们适用于所有用户。研究人员主要分析基于智能手机的用户研究数据,并报告结果,而没有考虑到构成智能手机用户群的许多不同群体。在这项工作中,我们挑战了智能手机用户的这些基本特征,并展示了存在更加多样化的用户组的证据。我们分析了106762名Android用户一个月的应用使用情况,并根据他们的应用使用行为,使用我们自己的两步聚类和功能排名选择方法,发现了382种不同类型的用户。我们的研究结果对移动计算研究的可重复性和可靠性、应用程序的设计和开发、确定哪些应用程序应该预装在智能手机上,以及不同类型用户的智能手机使用体验具有深远的影响。
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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