Relieving the burden of intensive labeling for stress monitoring in the wild by using semi-supervised learning

Front Psychol. 2024 Jan 5:14:1293513. doi: 10.3389/fpsyg.2023.1293513. eCollection 2023.

Abstract

Stress, a natural process affecting individuals' wellbeing, has a profound impact on overall quality of life. Researchers from diverse fields employ various technologies and methodologies to investigate it and alleviate the negative effects of this phenomenon. Wearable devices, such as smart bands, capture physiological data, including heart rate variability, motions, and electrodermal activity, enabling stress level monitoring through machine learning models. However, labeling data for model accuracy assessment poses a significant challenge in stress-related research due to incomplete or inaccurate labels provided by individuals in their daily lives. To address this labeling predicament, our study proposes implementing Semi-Supervised Learning (SSL) models. Through comparisons with deep learning-based supervised models and clustering-based unsupervised models, we evaluate the performance of our SSL models. Our experiments show that our SSL models achieve 77% accuracy with a classifier trained on an augmented dataset prepared using the label propagation (LP) algorithm. Additionally, our deep autoencoder network achieves 76% accuracy. These results highlight the superiority of SSL models over unsupervised learning techniques and their comparable performance to supervised learning models, even with limited labeled data. By relieving the burden of labeling in daily life stress recognition, our study advances stress-related research, recognizing stress as a natural process rather than a disease. This facilitates the development of more efficient and accurate stress monitoring methods in the wild.

Keywords: CNN-LSTM; DBSCAN; deep autoencoder; electrodermal activity; emotion regulation; label propagation; mental stress; psychophysiological.

Grants and funding

The author(s) declare financial support was received for the research, authorship, and/or publication of this article. This work was carried out within the framework of the AI Production Network Augsburg. This work presents and discusses results in the context of the research project ForDigitHealth. The project is part of the Bavarian Research Association on Healthy Use of Digital Technologies and Media (ForDigitHealth), which is funded by the Bavarian Ministry of Science and Arts.