这是一项利用智能手机传感器对学生行为模式进行实验研究的结果

Dimple Shah, A. Upasini, Kalyan Sasidhar
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引用次数: 2

摘要

智能手机已经成为我们生活中不可或缺的一部分。不同年龄段的人使用这些设备的方式不同,目的也不同。早期了解智能手机使用模式的研究是通过手工记录、个人访谈或问卷调查等传统方法进行的。特别是在印度的背景下,关于这类研究的文献很少,那些尝试过的研究都是通过传统方法进行的。随着在移动/智能手机中使用嵌入式传感器的移动传感的出现,自动、连续和被动传感已经成为一种非常简单和不引人注目的数据收集形式。因此,在这项工作中,我们报告了我们对手机使用和其他行为的实验研究结果,特别是我们研究所的学生群体。我们分析了47名学生在45天内从智能手机上收集的连续传感数据,并推断出他们的使用风格,包括每天使用手机的总时长、最常用的应用程序和使用时间。作为激励社会福祉的目标,我们还通过内置传感器推断学生的体育活动水平、社会互动水平和睡眠时间。我们相信我们的发现有助于让学生对科技的使用有更广泛的了解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Findings from an experimental study of student behavioral patterns using smartphone sensors
Smartphones have become an integral part of our lives. People of various age groups use these devices in different ways for different purposes. Early studies to understand smart-phone usage patterns were conducted through traditional methods such as manual logging, personal interviews or questionnaire. Particularly for the Indian context, there is very little literature on such studies and those that have attempted have been through traditional methods. With the emergence of mobile sensing which involves using the embedded sensors in mobile/smartphones, automatic, continuous and passive sensing has become a very easy and unobtrusive form of data collection. Therefore, in this work, we report findings of our experimental study on mobile phone use and other behavior, particularly by the student community at our institute. We analyze continuous sensing data collected from smartphones of 47 students over 45 days and infer their usage styles comprising of the total duration of mobile phone use per day, the most commonly used applications and the duration of their usage. As a goal for motivating social well-being, we also deduce the student physical activity levels, social interaction levels, and sleep duration using the built-in sensors. We believe our findings contribute to providing a broader understanding of technology use among students.
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