Monitoring Behavioral Changes Using Spatiotemporal Graphs: A Case Study on the StudentLife Dataset

Published: 10 Oct 2024, Last Modified: 31 Oct 2024NeurIPS 2024 Workshop on Behavioral MLEveryoneRevisionsBibTeXCC BY 4.0
Keywords: Mental Health MonitoringStress detection, Passive Sensing, Depression prediction
TL;DR: This paper presents a novel approach to monitoring student mental health using Spatiotemporal Graph Neural Networks (STGNN)
Abstract: This paper introduces a novel method for monitoring behavioral changes in university students by constructing spatiotemporal graphs from smartphone sensor data. Utilizing the Student Life dataset, which collects multi-modal data from smartphone sensors over a 10-week period, we capture detailed aspects of student behavior, including location, physical activity, and self-reported stress. By representing this data as spatiotemporal graphs, we model behavioral evolution across both temporal and spatial dimensions, employing a spatiotemporal Graph Neural Network (STGNN) to detect patterns associated with stress, sleep quality, and academic performance. This method enables a dynamic, high-resolution analysis of student well-being, offering a more comprehensive understanding of behavior over time.
Submission Number: 23
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