Extraction and Interpretation of Deep Autoencoder-based Temporal Features from Wearables for Forecasting Personalized Mood, Health, and Stress

dc.contributor.advisorSano, Akaneen_US
dc.contributor.committeeMemberVeeraraghavan, Ashoken_US
dc.creatorLi, Boningen_US
dc.date.accessioned2020-08-21T17:19:42Zen_US
dc.date.available2020-08-21T17:19:42Zen_US
dc.date.created2020-12en_US
dc.date.issued2020-08-20en_US
dc.date.submittedDecember 2020en_US
dc.date.updated2020-08-21T17:19:43Zen_US
dc.description.abstractHigh-resolution wearable sensor data contain physiological and behavioral information that can be utilized to predict and eventually improve human health and wellbeing. We propose a semi-supervised deep neural network framework to automatically learn features from passively collected multi-modal sensor data. This process can be personalized by finetuning the general features with participant-specific data. Then, using the learned features, we performed personalized prediction of subjective wellbeing scores with high precision. We also provide visual explanation and statistical interpretation of the automatically learned features and the prediction models. In this study, we explored multiple implementations of our framework including locally connected linear network, convolutional neural network, recurrent neural network, and visual attention network. The framework was evaluated using wearable sensor data and wellbeing labels collected from college students (total 6391 days from N=239). Sensor data include skin temperature, skin conductance, and acceleration; wellbeing scores include self-reported mood, health and stress ranged from 0 to 100. Compared to the prediction performance based on hand-crafted features, the proposed framework achieved higher precision with a smaller number of features. Our results show promising potentials of predicting self-reported mood, health, and stress accurately using an interpretable deep learning framework, ultimately for developing real-time health and wellbeing monitoring and intervention systems that can benefit various populations.en_US
dc.format.mimetypeapplication/pdfen_US
dc.identifier.citationLi, Boning. "Extraction and Interpretation of Deep Autoencoder-based Temporal Features from Wearables for Forecasting Personalized Mood, Health, and Stress." (2020) Master’s Thesis, Rice University. <a href="https://hdl.handle.net/1911/109251">https://hdl.handle.net/1911/109251</a>.en_US
dc.identifier.urihttps://hdl.handle.net/1911/109251en_US
dc.language.isoengen_US
dc.rightsCopyright is held by the author, unless otherwise indicated. Permission to reuse, publish, or reproduce the work beyond the bounds of fair use or other exemptions to copyright law must be obtained from the copyright holder.en_US
dc.subjectRepresentation learningen_US
dc.subjectWearable sensorsen_US
dc.subjectRecurrent autoencodersen_US
dc.subjectPersonalized predictionen_US
dc.subjectNetwork interpretabilityen_US
dc.titleExtraction and Interpretation of Deep Autoencoder-based Temporal Features from Wearables for Forecasting Personalized Mood, Health, and Stressen_US
dc.typeThesisen_US
dc.type.materialTexten_US
thesis.degree.departmentElectrical and Computer Engineeringen_US
thesis.degree.disciplineEngineeringen_US
thesis.degree.grantorRice Universityen_US
thesis.degree.levelMastersen_US
thesis.degree.nameMaster of Scienceen_US
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