使用机器学习方法的可解释睡眠质量评估模型

Rock-Hyun Choi, Won-Seok Kang, C. Son
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引用次数: 6

摘要

本研究提出了一种基于心率睡眠指数的可解释睡眠质量评估方案。在提出的模型中,使用LERS(基于粗糙集的示例学习)的全局覆盖规则归纳来生成与睡眠质量状态相关的规则,例如“坏”、“正常”和“好”。这些规则被用来解释三种睡眠状态。为了证明所提出方案的适用性,我们基于280名工厂和办公室员工的睡眠时间序列数据构建了睡眠质量评估模型。通过统计交叉验证实验对提出的模型进行了评价。
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Explainable sleep quality evaluation model using machine learning approach
This research presents a scheme for explainable sleep quality evaluation utilizing the heart rate based sleep index. In the proposed model, the global covering rule induction of LERS (Learning from Examples based on Rough Sets) is used to generate rules associated with sleep quality status, such as ‘Bad,’ ‘Normal,’ and ‘Good.’ These rules are used to interpret the three sleep statuses. To show the applicability of the proposed scheme, we construct a sleep quality evaluation model based on sleep intraday time-series data collected from 280 factory and office workers with Fitbit fitness trackers. An evaluation of the proposed model was provided through statistical cross validation experiments.
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