通过机器学习和大型语言模型改善睡眠质量的情境感知行为提示

Future Internet Pub Date : 2024-01-30 DOI:10.3390/fi16020046
Erica Corda, S. M. Massa, Daniele Riboni
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引用次数: 0

摘要

多项研究表明,良好的睡眠质量对个人健康至关重要,因为睡眠不足可能会破坏身体、精神和社会等不同层面的健康。因此,人们对基于个人传感器的睡眠监测工具越来越感兴趣。然而,目前很少有情境感知方法可以通过行为改变提示来帮助个人提高睡眠质量。为了应对这一挑战,我们在本文中提出了一个系统,该系统结合了机器学习算法和大型语言模型,可预测下一夜的睡眠质量,并提供情境感知的行为改变提示,以改善睡眠。为了鼓励用户坚持使用并提高信任度,我们的系统包括使用大型语言模型来描述机器学习算法认为对睡眠健康有害的条件,并解释为什么会因此产生改变行为的提示。我们开发了一个系统原型,包括一个智能手机应用程序,并与一组用户进行了实验。结果表明,我们系统的预测与实际睡眠质量相关。此外,一项初步的用户研究表明,在我们的系统中使用大型语言模型有助于提高信任度和参与度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Context-Aware Behavioral Tips to Improve Sleep Quality via Machine Learning and Large Language Models
As several studies demonstrate, good sleep quality is essential for individuals’ well-being, as a lack of restoring sleep may disrupt different physical, mental, and social dimensions of health. For this reason, there is increasing interest in tools for the monitoring of sleep based on personal sensors. However, there are currently few context-aware methods to help individuals to improve their sleep quality through behavior change tips. In order to tackle this challenge, in this paper, we propose a system that couples machine learning algorithms and large language models to forecast the next night’s sleep quality, and to provide context-aware behavior change tips to improve sleep. In order to encourage adherence and to increase trust, our system includes the use of large language models to describe the conditions that the machine learning algorithm finds harmful to sleep health, and to explain why the behavior change tips are generated as a consequence. We develop a prototype of our system, including a smartphone application, and perform experiments with a set of users. Results show that our system’s forecast is correlated to the actual sleep quality. Moreover, a preliminary user study suggests that the use of large language models in our system is useful in increasing trust and engagement.
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