使用基于智能手机的数字表型跟踪和建模主观幸福感

S. Rhim, Uichin Lee, Kyungsik Han
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引用次数: 8

摘要

主观幸福感(Subjective well-being, SWB)是一个被广泛研究和使用的概念,它指的是人们如何感受和思考自己的生活,是幸福感的许多综合视角之一。许多研究分析了技术在改善主观幸福感中的作用和利用;然而,特别是当涉及到用户建模时,SWB的多面性和可变方面很少被考虑。本文基于对78名大学生为期4个月的用户研究,分析了基于智能手机的主观幸福感数据的识别因素,并对主观幸福感变化进行了建模。我们的回归分析强调了用户属性(如个性、自尊)对主观幸福感的重要性,以及来自智能手机数据的显著因素(如在校时间、站立/坐着的比例、费用)对主观幸福感的显著影响。我们的分类分析显示了以合理的性能检测SWB变化的潜力,以及改进模型以更适合个人的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Tracking and Modeling Subjective Well-Being Using Smartphone-Based Digital Phenotype
Subjective well-being (SWB) is a well-studied, widely used construct that refers to how people feel and think about their lives as one of many comprehensive perspectives on well-being. Much research has analyzed the role and utilization of technologies to improve one's SWB; however, especially when it comes to user modeling, multifaceted and variational aspects of SWB are less frequently considered. This paper presents an analysis on identifying factors for smartphone-based data on SWB and modeling SWB changes, based on a four-month user study with 78 college students. Our regression analysis highlights the significance of user attributes (e.g., personality, self-esteem) on SWB and salient factors derived from smartphone data (e.g., time spent on campus, ratio of standing/sitting stationary, expenses) that significantly account for SWB. Our classification analysis shows the potential for detecting SWB changes with reasonable performance, as well as for improving a model to be more tailored to individuals.
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