Automatically detecting problematic use of smartphones

Choonsung Shin, A. Dey
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引用次数: 90

Abstract

Smartphone adoption has increased significantly and, with the increase in smartphone capabilities, this means that users can access the Internet, communicate, and entertain themselves anywhere and anytime. However, there is growing evidence of problematic use of smartphones that impacts both social and heath aspects of users' lives. Currently, assessment of overuse or problematic use depends on one-time, self-reported behavioral information about phone use. Due to the known issues with self-reports in such types of assessments, we explore an automated, objective and repeatable approach for assessing problematic usage. We collect a wide range of phone usage data from smartphones, identify a number of usage features that are relevant to this assessment, and build detection models based on Adaboost with machine learning algorithms automatically detecting problematic use. We found that the number of apps used per day, the ratio of SMSs to calls, the number of event-initiated sessions, the number of apps used per event initiated session, and the length of non-event-initiated sessions are useful for detecting problematic usage. With these, a detection model can identify users with problematic usage with 89.6% accuracy (F-score of .707).
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自动检测有问题的智能手机使用
智能手机的使用率显著增加,随着智能手机功能的增加,这意味着用户可以随时随地访问互联网、交流和娱乐。然而,越来越多的证据表明,智能手机的使用问题影响了用户生活的社交和健康方面。目前,对过度使用或问题使用的评估依赖于一次性的、自我报告的手机使用行为信息。由于这类评估中自我报告的已知问题,我们探索了一种自动化、客观和可重复的方法来评估有问题的使用情况。我们从智能手机上收集了大量的手机使用数据,确定了与此评估相关的一些使用特征,并基于Adaboost构建了检测模型,并使用机器学习算法自动检测有问题的使用。我们发现,每天使用的应用程序数量、短信与通话的比例、事件启动会话的数量、每个事件启动会话使用的应用程序数量以及非事件启动会话的长度对于检测问题使用非常有用。有了这些,检测模型可以识别有问题使用的用户,准确率为89.6% (f值为0.707)。
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