Human Heterogeneity Invariant Stress Sensing
Journal:
arXiv
Published Date:
Jun 2, 2025
Abstract
Stress affects physical and mental health, and wearable devices have been
widely used to detect daily stress through physiological signals. However,
these signals vary due to factors such as individual differences and health
conditions, making generalizing machine learning models difficult. To address
these challenges, we present Human Heterogeneity Invariant Stress Sensing
(HHISS), a domain generalization approach designed to find consistent patterns
in stress signals by removing person-specific differences. This helps the model
perform more accurately across new people, environments, and stress types not
seen during training. Its novelty lies in proposing a novel technique called
person-wise sub-network pruning intersection to focus on shared features across
individuals, alongside preventing overfitting by leveraging continuous labels
while training. The study focuses especially on people with opioid use disorder
(OUD)-a group where stress responses can change dramatically depending on their
time of daily medication taking. Since stress often triggers cravings, a model
that can adapt well to these changes could support better OUD rehabilitation
and recovery. We tested HHISS on seven different stress datasets-four of which
we collected ourselves and three public ones. Four are from lab setups, one
from a controlled real-world setting, driving, and two are from real-world
in-the-wild field datasets without any constraints. This is the first study to
evaluate how well a stress detection model works across such a wide range of
data. Results show HHISS consistently outperformed state-of-the-art baseline
methods, proving both effective and practical for real-world use. Ablation
studies, empirical justifications, and runtime evaluations confirm HHISS's
feasibility and scalability for mobile stress sensing in sensitive real-world
applications.