Advancing Objective Mobile Device Use Measurement in Children Ages 6–11 Through Built-In Device Sensors: A Proof-of-Concept Study

IF 4.3 Q1 PSYCHOLOGY, MULTIDISCIPLINARY Human Behavior and Emerging Technologies Pub Date : 2024-05-28 DOI:10.1155/2024/5860114
Olivia L. Finnegan, R. Glenn Weaver, Hongpeng Yang, James W. White, Srihari Nelakuditi, Zifei Zhong, Rahul Ghosal, Yan Tong, Aliye B. Cepni, Elizabeth L. Adams, Sarah Burkart, Michael W. Beets, Bridget Armstrong
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Abstract

Mobile devices (e.g., tablets and smartphones) have been rapidly integrated into the lives of children and have impacted how children engage with digital media. The portability of these devices allows for sporadic, on-demand interaction, reducing the accuracy of self-report estimates of mobile device use. Passive sensing applications objectively monitor time spent on a given device but are unable to identify who is using the device, a significant limitation in child screen time research. Behavioral biometric authentication, using embedded mobile device sensors to continuously authenticate users, could be applied to address this limitation. This study examined the preliminary accuracy of machine learning models trained on iPad sensor data to identify the unique user of the device in a sample of children ages 6 to 11. Data was collected opportunistically from nine participants (8.2 ± 1.75 years, 5 female) in the sedentary portion of two semistructured physical activity protocols. SensorLog was downloaded onto study iPads and collected data from the accelerometer, gyroscope, and magnetometer sensors while the participant interacted with the iPad. Five machine learning models, logistic regression (LR), support vector machine, neural net (NN), k-nearest neighbors (k-NN), and random forest (RF), were trained using 57 features generated from the sensor output to perform multiclass classification. A train-test split of 80%–20% was used for model fitting. Model performance was evaluated using F1 score, accuracy, precision, and recall. Model performance was high, with F1 scores ranging from 0.75 to 0.94. RF and k-NN had the highest performance across metrics, with F1 scores of 0.94 for both models. This study highlights the potential of using existing mobile device sensors to continuously identify the user of a device in the context of screen time measurement. Future research should explore the performance of this technology in larger samples of children and in free-living environments.

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通过内置设备传感器推进对 6-11 岁儿童使用移动设备情况的客观测量:概念验证研究
移动设备(如平板电脑和智能手机)已迅速融入儿童的生活,并对儿童接触数字媒体的方式产生了影响。这些设备的便携性允许儿童进行零散的、按需的互动,从而降低了自我报告移动设备使用情况的准确性。被动传感应用可以客观地监控特定设备的使用时间,但无法识别谁在使用该设备,这是儿童屏幕使用时间研究的一大局限。使用嵌入式移动设备传感器对用户进行持续验证的行为生物识别认证可用于解决这一局限性。本研究考察了在 iPad 传感器数据基础上训练的机器学习模型在 6-11 岁儿童样本中识别设备唯一用户的初步准确性。数据是在两个半结构化体育活动方案的久坐部分从 9 名参与者(8.2 ± 1.75 岁,5 名女性)中随机收集的。研究人员将 SensorLog 下载到 iPad 上,并在参与者与 iPad 互动时从加速计、陀螺仪和磁力计传感器收集数据。使用从传感器输出中生成的 57 个特征对逻辑回归 (LR)、支持向量机、神经网络 (NN)、k-近邻 (k-NN) 和随机森林 (RF) 五种机器学习模型进行了训练,以执行多类分类。模型拟合采用 80%-20% 的训练-测试比例。模型性能使用 F1 分数、准确度、精确度和召回率进行评估。模型性能很高,F1 分数在 0.75 到 0.94 之间。RF 和 k-NN 的各项指标性能最高,两个模型的 F1 分数均为 0.94。这项研究强调了在屏幕时间测量中使用现有移动设备传感器持续识别设备用户的潜力。未来的研究应该在更大的儿童样本和自由生活环境中探索这项技术的性能。
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来源期刊
Human Behavior and Emerging Technologies
Human Behavior and Emerging Technologies Social Sciences-Social Sciences (all)
CiteScore
17.20
自引率
8.70%
发文量
73
期刊介绍: Human Behavior and Emerging Technologies is an interdisciplinary journal dedicated to publishing high-impact research that enhances understanding of the complex interactions between diverse human behavior and emerging digital technologies.
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