Title :
Prediction of Happy-Sad mood from daily behaviors and previous sleep history
Author :
Akane Sano;Amy Z. Yu;Andrew W. McHill;Andrew J. K. Phillips;Sara Taylor;Natasha Jaques;Elizabeth B. Klerman;Rosalind W. Picard
Author_Institution :
Media Lab, Affective Computing Group, Massachusetts Institute of Technology, Cambridge, 02139 USA
Abstract :
We collected and analyzed subjective and objective data using surveys and wearable sensors worn day and night from 68 participants for ~30 days each, to address questions related to the relationships among sleep duration, sleep irregularity, self-reported Happy-Sad mood and other daily behavioral factors in college students. We analyzed this behavioral and physiological data to (i) identify factors that classified the participants into Happy-Sad mood using support vector machines (SVMs); and (ii) analyze how accurately sleep duration and sleep regularity for the past 1-5 days classified morning Happy-Sad mood. We found statistically significant associations amongst Sad mood and poor health-related factors. Behavioral factors including the frequency of negative social interactions, and negative emails, and total academic activity hours showed the best performance in separating the Happy-Sad mood groups. Sleep regularity and sleep duration predicted daily Happy-Sad mood with 65-80% accuracy. The number of nights giving the best prediction of Happy-Sad mood varied for different individuals.
Keywords :
"Mood","Sleep","Electronic mail","Accuracy","Stress","Face","Wearable sensors"
Conference_Titel :
Engineering in Medicine and Biology Society (EMBC), 2015 37th Annual International Conference of the IEEE
Electronic_ISBN :
1558-4615
DOI :
10.1109/EMBC.2015.7319954