Integrating Wearable Sensor Data and Self-reported Diaries for Personalized Affect Forecasting (2403.13841v2)
Abstract: Emotional states, as indicators of affect, are pivotal to overall health, making their accurate prediction before onset crucial. Current studies are primarily centered on immediate short-term affect detection using data from wearable and mobile devices. These studies typically focus on objective sensory measures, often neglecting other forms of self-reported information like diaries and notes. In this paper, we propose a multimodal deep learning model for affect status forecasting. This model combines a transformer encoder with a pre-trained LLM, facilitating the integrated analysis of objective metrics and self-reported diaries. To validate our model, we conduct a longitudinal study, enrolling college students and monitoring them over a year, to collect an extensive dataset including physiological, environmental, sleep, metabolic, and physical activity parameters, alongside open-ended textual diaries provided by the participants. Our results demonstrate that the proposed model achieves predictive accuracy of 82.50% for positive affect and 82.76% for negative affect, a full week in advance. The effectiveness of our model is further elevated by its explainability.
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- Zhongqi Yang (10 papers)
- Yuning Wang (20 papers)
- Ken S. Yamashita (1 paper)
- Maryam Sabah (1 paper)
- Elahe Khatibi (7 papers)
- Iman Azimi (20 papers)
- Nikil Dutt (43 papers)
- Jessica L. Borelli (3 papers)
- Amir M. Rahmani (48 papers)