TL;DR
This study demonstrates that mobile app interaction data can serve as a scalable indicator of sleep behavior and job performance, revealing significant correlations with real-world outcomes across different populations.
Contribution
The paper introduces a novel approach to infer sleep and performance metrics from online app interactions, validated through two observational studies with diverse cohorts.
Findings
Sleep loss correlates with reduced job performance and slower app interaction times.
App interaction time is a meaningful indicator of psychomotor function and circadian rhythms.
Online app data can provide scalable insights into cognition and productivity.
Abstract
Sleep is critical to human function, mediating factors like memory, mood, energy, and alertness; therefore, it is commonly conjectured that a good night's sleep is important for job performance. However, both real-world sleep behavior and job performance are hard to measure at scale. In this work, we show that people's everyday interactions with online mobile apps can reveal insights into their job performance in real-world contexts. We present an observational study in which we objectively tracked the sleep behavior and job performance of salespeople (N = 15) and athletes (N = 19) for 18 months, using a mattress sensor and online mobile app. We first demonstrate that cumulative sleep measures are correlated with job performance metrics, showing that an hour of daily sleep loss for a week was associated with a 9.0% and 9.5% reduction in performance of salespeople and athletes,…
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