In this paper, we propose a new class of point process
models to model the activity patterns of social media users. The proposed class
of models has the flexibility to accommodate the complex behaviors of modern
social media users and to provide straightforward insight into users' online
content generating behavior. A composite likelihood approach and a composite
likelihood EM procedure are developed to overcome the challenges in parameter
estimation.
We show the consistency and asymptotic normality
of the maximum composite likelihood estimator. The effectiveness of the
proposed method is demonstrated through simulation studies. In an application
to real social media data, we find interesting subgroups of users with distinct
behaviors. Furthermore, we discuss the effect of social ties on a user's online
content generating behavior.