MLLGFeb 28, 2018

Modeling Activity Tracker Data Using Deep Boltzmann Machines

arXiv:1802.10576v1
Originality Synthesis-oriented
AI Analysis

This is an incremental application of an existing method to a new domain (health research with activity tracker data).

The paper tackled modeling unlabeled Fitbit activity tracker data using deep Boltzmann machines (DBMs) for unsupervised learning, revealing two distinct weekly usage patterns, such as one group using trackers more on Mondays and Tuesdays.

Commercial activity trackers are set to become an essential tool in health research, due to increasing availability in the general population. The corresponding vast amounts of mostly unlabeled data pose a challenge to statistical modeling approaches. To investigate the feasibility of deep learning approaches for unsupervised learning with such data, we examine weekly usage patterns of Fitbit activity trackers with deep Boltzmann machines (DBMs). This method is particularly suitable for modeling complex joint distributions via latent variables. We also chose this specific procedure because it is a generative approach, i.e., artificial samples can be generated to explore the learned structure. We describe how the data can be preprocessed to be compatible with binary DBMs. The results reveal two distinct usage patterns in which one group frequently uses trackers on Mondays and Tuesdays, whereas the other uses trackers during the entire week. This exemplary result shows that DBMs are feasible and can be useful for modeling activity tracker data.

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