Flexible Modeling Framework for Self-Exciting Diurnal Processes with Applications to Smartphone Use

Ian Barnett Co-Author
University of Pennsylvania
 
Ryan Xie First Author
 
Ryan Xie Presenting Author
 
Wednesday, Aug 6: 8:50 AM - 9:05 AM
1061 
Contributed Papers 
Music City Center 
Improving strength of routine is a target for many therapies and treatments of mood and affective disorders. Smartphone usage data enables us to model person-specific diurnal patterns of usage that provide useful insight into a person's routine and behavior. Considering phone usage as a point process, existing approaches focus on capturing self-exciting behavior, the phenomenon where the rate of usage is heightened during and immediately after using one's phone. While this self-exciting phenomenon is important, there are limited methods that also allow for flexible modeling of diurnal effects on the rate of smartphone usage. We propose a framework that can combine the self-exciting Hawkes process with a penalized Fourier series to capture important diurnal trends. Through simulation experiments and an application to a cohort of patients with affective disorders, we show the benefit of models that account for self-exciting and diurnal patterns concurrently.

Keywords

mobile health

longitudinal and correlated data

point processes

diurnal patterns

event data

mental health 

Main Sponsor

Biometrics Section