Passive sensing data predicts stress in university students: a supervised machine learning method for digital phenotyping
Artur Shvetcov(The University of Sydney), Helen Christensen(UNSW Sydney), Sunil Gupta(Deakin University), Rajesh Vasa(Deakin University), Jin Han(Black Dog Institute), Leonard Hoon(Deakin University), Kon Mouzakis(Deakin University), Svetha Venkatesh(Deakin University), Joost Funke Kupper(Deakin University), Jill M. Newby(Black Dog Institute), Michael J. Spoelma(Black Dog Institute), Wu-Yi Zheng(Black Dog Institute), Aimy Slade(Black Dog Institute), Alexis E. Whitton(The University of Sydney)
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