TY - JOUR
T1 - Personalized Multitask Learning for Predicting Tomorrow's Mood, Stress, and Health
AU - Taylor, Sara
AU - Jaques, Natasha
AU - Nosakhare, Ehimwenma
AU - Sano, Akane
AU - Picard, Rosalind
N1 - Publisher Copyright:
© 2010-2012 IEEE.
PY - 2020/4/1
Y1 - 2020/4/1
N2 - While accurately predicting mood and wellbeing could have a number of important clinical benefits, traditional machine learning (ML) methods frequently yield low performance in this domain. We posit that this is because a one-size-fits-all machine learning model is inherently ill-suited to predicting outcomes like mood and stress, which vary greatly due to individual differences. Therefore, we employ Multitask Learning (MTL) techniques to train personalized ML models which are customized to the needs of each individual, but still leverage data from across the population. Three formulations of MTL are compared: i) MTL deep neural networks, which share several hidden layers but have final layers unique to each task; ii) Multi-task Multi-Kernel learning, which feeds information across tasks through kernel weights on feature types; and iii) a Hierarchical Bayesian model in which tasks share a common Dirichlet Process prior. We offer the code for this work in open source. These techniques are investigated in the context of predicting future mood, stress, and health using data collected from surveys, wearable sensors, smartphone logs, and the weather. Empirical results demonstrate that using MTL to account for individual differences provides large performance improvements over traditional machine learning methods and provides personalized, actionable insights.
AB - While accurately predicting mood and wellbeing could have a number of important clinical benefits, traditional machine learning (ML) methods frequently yield low performance in this domain. We posit that this is because a one-size-fits-all machine learning model is inherently ill-suited to predicting outcomes like mood and stress, which vary greatly due to individual differences. Therefore, we employ Multitask Learning (MTL) techniques to train personalized ML models which are customized to the needs of each individual, but still leverage data from across the population. Three formulations of MTL are compared: i) MTL deep neural networks, which share several hidden layers but have final layers unique to each task; ii) Multi-task Multi-Kernel learning, which feeds information across tasks through kernel weights on feature types; and iii) a Hierarchical Bayesian model in which tasks share a common Dirichlet Process prior. We offer the code for this work in open source. These techniques are investigated in the context of predicting future mood, stress, and health using data collected from surveys, wearable sensors, smartphone logs, and the weather. Empirical results demonstrate that using MTL to account for individual differences provides large performance improvements over traditional machine learning methods and provides personalized, actionable insights.
KW - Mood prediction
KW - deep neural networks
KW - hierarchical Bayesian model
KW - multi-kernel SVM
KW - multitask learning
UR - http://www.scopus.com/inward/record.url?scp=85039769283&partnerID=8YFLogxK
UR - http://www.scopus.com/inward/citedby.url?scp=85039769283&partnerID=8YFLogxK
U2 - 10.1109/TAFFC.2017.2784832
DO - 10.1109/TAFFC.2017.2784832
M3 - Article
AN - SCOPUS:85039769283
SN - 1949-3045
VL - 11
SP - 200
EP - 213
JO - IEEE Transactions on Affective Computing
JF - IEEE Transactions on Affective Computing
IS - 2
M1 - 8226850
ER -