Exploring the Alignment of Perceived and Measured Sleep Quality with Working Memory using Consumer Wearables
May 31, 2025 Β· Declared Dead Β· π NASA/ESA Conference on Adaptive Hardware and Systems
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Authors
Peter Neigel, David Antony Selby, Shota Arai, Benjamin Tag, Niels van Berkel, Sebastian Vollmer, Andrew Vargo, Koichi Kise
arXiv ID
2507.19491
Category
cs.HC: Human-Computer Interaction
Cross-listed
cs.CY
Citations
1
Venue
NASA/ESA Conference on Adaptive Hardware and Systems
Last Checked
4 months ago
Abstract
Wearable devices offer detailed sleep-tracking data. However, whether this information enhances our understanding of sleep or simply quantifies already-known patterns remains unclear. This work explores the relationship between subjective sleep self-assessments and sensor data from an Oura ring over 4--8 weeks in-the-wild. 29 participants rated their sleep quality daily compared to the previous night and completed a working memory task. Our findings reveal that differences in REM sleep, nocturnal heart rate, N-Back scores, and bedtimes highly predict sleep self-assessment in significance and effect size. For N-Back performance, REM sleep duration, prior night's REM sleep, and sleep self-assessment are the strongest predictors. We demonstrate that self-report sensitivity towards sleep markers differs among participants. We identify three groups, highlighting that sleep trackers provide more information gain for some users than others. Additionally, we make all experiment data publicly available.
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