Active Reinforcement Learning for Personalized Stress Monitoring in Everyday Settings
Tazarv, Ali, Labbaf, Sina, Rahmani, Amir, Dutt, Nikil, Levorato, Marco
–arXiv.org Artificial Intelligence
Most existing sensor-based monitoring frameworks presume that a large available labeled dataset is processed to train accurate detection models. However, in settings where personalization is necessary at deployment time to fine-tune the model, a person-specific dataset needs to be collected online by interacting with the users. Optimizing the collection of labels in such phase is instrumental to impose a tolerable burden on the users while maximizing personal improvement. In this paper, we consider a fine-grain stress detection problem based on wearable sensors targeting everyday settings, and propose a novel context-aware active learning strategy capable of jointly maximizing the meaningfulness of the signal samples we request the user to label and the response rate. We develop a multilayered sensor-edge-cloud platform to periodically capture physiological signals and process them in real-time, as well as to collect labels and retrain the detection model. We collect a large dataset and show that the context-aware active learning technique we propose achieves a desirable detection performance using 88\% and 32\% fewer queries from users compared to a randomized strategy and a traditional active learning strategy, respectively.
arXiv.org Artificial Intelligence
Apr-28-2023
- Country:
- North America > United States > California (0.29)
- Genre:
- Research Report > New Finding (0.93)
- Industry:
- Health & Medicine
- Consumer Health (0.68)
- Diagnostic Medicine (0.93)
- Therapeutic Area
- Cardiology/Vascular Diseases (0.68)
- Psychiatry/Psychology > Mental Health (0.46)
- Information Technology (0.87)
- Health & Medicine
- Technology: