N=1 Modelling of Lifestyle Impact on SleepPerformance
- URL: http://arxiv.org/abs/2006.10884v1
- Date: Thu, 18 Jun 2020 22:43:35 GMT
- Title: N=1 Modelling of Lifestyle Impact on SleepPerformance
- Authors: Dhruv Upadhyay, Vaibhav Pandey, Nitish Nag, Ramesh Jain
- Abstract summary: Sleep is critical to leading a healthy lifestyle.
Despite current research, creating personalized sleep models in real-world settings has been challenging.
This research proposes a sleep model that can identify causal relationships between daily activities and sleep quality.
- Score: 2.9073923339818006
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Sleep is critical to leading a healthy lifestyle. Each day, most people go to
sleep without any idea about how their night's rest is going to be. For an
activity that humans spend around a third of their life doing, there is a
surprising amount of mystery around it. Despite current research, creating
personalized sleep models in real-world settings has been challenging. Existing
literature provides several connections between daily activities and sleep
quality. Unfortunately, these insights do not generalize well in many
individuals. For these reasons, it is important to create a personalized sleep
model. This research proposes a sleep model that can identify causal
relationships between daily activities and sleep quality and present the user
with specific feedback about how their lifestyle affects their sleep. Our
method uses N-of-1 experiments on longitudinal user data and event mining to
generate understanding between lifestyle choices (exercise, eating, circadian
rhythm) and their impact on sleep quality. Our experimental results identified
and quantified relationships while extracting confounding variables through a
causal framework. These insights can be used by the user or a personal health
navigator to provide guidance in improving sleep.
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