TL;DR
UBIWEAR is a comprehensive, data-driven framework that leverages machine learning to accurately predict physical activity, enabling personalized health interventions and advancing mHealth technology.
Contribution
The paper introduces UBIWEAR, an end-to-end framework utilizing machine learning for physical activity prediction, with a novel data preprocessing approach and benchmarking on a large-scale dataset.
Findings
Achieved a MAE of 1087 steps, 65% lower than previous methods.
Demonstrated the feasibility of accurate physical activity prediction.
Provided a robust benchmark for future research in activity prediction.
Abstract
It is indisputable that physical activity is vital for an individual's health and wellness. However, a global prevalence of physical inactivity has induced significant personal and socioeconomic implications. In recent years, a significant amount of work has showcased the capabilities of self-tracking technology to create positive health behavior change. This work is motivated by the potential of personalized and adaptive goal-setting techniques in encouraging physical activity via self-tracking. To this end, we propose UBIWEAR, an end-to-end framework for intelligent physical activity prediction, with the ultimate goal to empower data-driven goal-setting interventions. To achieve this, we experiment with numerous machine learning and deep learning paradigms as a robust benchmark for physical activity prediction tasks. To train our models, we utilize, "MyHeart Counts", an open,…
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Taxonomy
MethodsMasked autoencoder
