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Estimating Sleep Duration from Temporal Factors, Daily Activities, and Smartphone Use

机译:从时间因素,日常活动和智能手机使用情况估算睡眠时间

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As the economy progresses and new technologies emerge, more people are struggling with sleep-related difficulties. Poor sleep quality adversely affects people's health and well-being, productivity, academic success, and cognitive capability. These impairments can also affect traffic and industrial safety, and national economic developments. To better tackle these problems, it is important to accurately understand people's sleep quality. In this work, we present approaches to accurately estimate a user's sleep duration, which will facilitate better estimation of sleep quality. We apply generalized linear model (GLM) and generalized linear mixed model (GLMM), which takes person variability into consideration in addition to fixed effects, such as various temporal factors (sleep start time, days of a week, etc.), weather, a user's daily activities and calendar entries to estimate sleep duration. Through our analysis of a longitudinal sensor dataset collected from the smartphones and Fitbits of a cohort of 18 on-campus college students over an extended period of time, we show the feasibility of the work with correlations of up to 0.745 between the pairs of actual and estimated sleep durations.
机译:随着经济的发展和新技术的出现,越来越多的人正为与睡眠有关的困难而苦苦挣扎。不良的睡眠质量会对人们的健康和福祉,生产力,学业成就以及认知能力产生不利影响。这些损害也可能影响交通和工业安全以及国民经济发展。为了更好地解决这些问题,准确了解人们的睡眠质量很重要。在这项工作中,我们提出了准确估计用户睡眠时间的方法,这将有助于更好地估计睡眠质量。我们应用广义线性模型(GLM)和广义线性混合模型(GLMM),除了固定影响(例如各种时间因素(睡眠开始时间,一周中的天数等),天气,用户的日常活动和日历条目以估算睡眠时间。通过对从18名校园内大学生群体的智能手机和Fitbits收集的纵向传感器数据集进行长时间分析,我们证明了这项工作的可行性,在实际和实际情况之间,相关系数最高为0.745。估计的睡眠时间。

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