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Stress Monitoring in Free-Living Environments

We present a data-driven approach for stress detection based on convolutional neural networks while addressing the problems of the best sensor channel and the lack of knowledge about stress episodes.

Neonatal Risk Modeling and Prediction

We propose an automated risk prediction system that can make recommendations to clinicians in real-time with machine learning classifiers that predict the risk of developing neurological impairment.

Personalized Modeling and Detection of Moments of Cannabis Use in Free-Living Environments

We use an MLP model to identify and detect moments of cannabis use. We later use transfer learning to further enhance model accuracy.