SleepMore: Inferring Sleep Duration at Scale via Multi-Device WiFi Sensing
Camellia Zakaria, Gizem Yilmaz, Priyanka Mammen, Michael Chee,, Prashant Shenoy, Rajesh Balan

TL;DR
SleepMore leverages passive WiFi sensing and machine learning to accurately estimate sleep duration at scale, offering a non-intrusive alternative to wearable devices with comparable accuracy.
Contribution
This work introduces SleepMore, a novel WiFi-based sleep tracking system that quantifies uncertainty to improve accuracy and scalability over existing methods.
Findings
Achieves sleep duration estimates within 15-28 minutes of wearable baselines.
Maintains accuracy within a 5% uncertainty rate across diverse user groups.
Outperforms prior WiFi-based sleep monitoring approaches.
Abstract
The availability of commercial wearable trackers equipped with features to monitor sleep duration and quality has enabled more useful sleep health monitoring applications and analyses. However, much research has reported the challenge of long-term user retention in sleep monitoring through these modalities. Since modern Internet users own multiple mobile devices, our work explores the possibility of employing ubiquitous mobile devices and passive WiFi sensing techniques to predict sleep duration as the fundamental measure for complementing long-term sleep monitoring initiatives. In this paper, we propose SleepMore, an accurate and easy-to-deploy sleep-tracking approach based on machine learning over the user's WiFi network activity. It first employs a semi-personalized random forest model with an infinitesimal jackknife variance estimation method to classify a user's network activity…
Peer Reviews
No public reviews on file for this paper yet. If you reviewed it on a platform where reviews are public (OpenReview, ICLR, NeurIPS, ICML), you can paste yours below so the community can read it here.
Videos
No videos yet. Explain this paper in a talk, walkthrough, or lecture? Add one.
