TY - GEN
T1 - iSurvive: An Interpretable, Event-time Prediction Model for mHealth
AU - Dempsey, Walter H.
AU - Moreno, Alexander
AU - Scott, Christy K.
AU - Dennis, Michael L.
AU - Gustafson, David H.
AU - Murphy, Susan A.
AU - Rehg, James M.
N1 - Publisher Copyright:
Copyright 2017 by the authors.
PY - 2017
Y1 - 2017
N2 - An important mobile health (mHealth) task is the use of multimodal data, such as sensor streams and self-report, to construct interprétable time-to-event predictions of, for example, lapse to alcohol or illicit drug use. Interpretability of the prediction model is important for acceptance and adoption by domain scientists, enabling model outputs and parameters to inform theory and guide intervention design. Temporal latent state models arc therefore attractive, and so we adopt the continuous time hidden Markov model (CT-HMM) due to its ability to describe irregular arrival times of event data. Standard CT-HMMs, however, are not specialized for predicting the time to a future event, the key variable for mHealth interventions. Also, standard emission models lack a sufficiently rich structure to describe multimodal data and incorporate domain knowledge. We present iSurvive, an extension of classical survival analysis to a CT-HMM. We present a parameter learning method for GLM emissions and survival model fitting, and present promising results on both synthetic data and an mHealth drug use dataset.
AB - An important mobile health (mHealth) task is the use of multimodal data, such as sensor streams and self-report, to construct interprétable time-to-event predictions of, for example, lapse to alcohol or illicit drug use. Interpretability of the prediction model is important for acceptance and adoption by domain scientists, enabling model outputs and parameters to inform theory and guide intervention design. Temporal latent state models arc therefore attractive, and so we adopt the continuous time hidden Markov model (CT-HMM) due to its ability to describe irregular arrival times of event data. Standard CT-HMMs, however, are not specialized for predicting the time to a future event, the key variable for mHealth interventions. Also, standard emission models lack a sufficiently rich structure to describe multimodal data and incorporate domain knowledge. We present iSurvive, an extension of classical survival analysis to a CT-HMM. We present a parameter learning method for GLM emissions and survival model fitting, and present promising results on both synthetic data and an mHealth drug use dataset.
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M3 - Conference contribution
AN - SCOPUS:85048443350
T3 - 34th International Conference on Machine Learning, ICML 2017
SP - 1614
EP - 1630
BT - 34th International Conference on Machine Learning, ICML 2017
PB - International Machine Learning Society (IMLS)
T2 - 34th International Conference on Machine Learning, ICML 2017
Y2 - 6 August 2017 through 11 August 2017
ER -