Online Learning for Mixture of Multivariate Hawkes Processes
This work addresses the need for integrated modeling in online learning of Hawkes processes, though it appears incremental by combining existing aspects.
The paper tackled the problem of modeling both latent network structure and event interactions in multivariate Hawkes processes for medical and financial applications, and experimental results demonstrated the efficacy of the approach.
Online learning of Hawkes processes has received increasing attention in the last couple of years especially for modeling a network of actors. However, these works typically either model the rich interaction between the events or the latent cluster of the actors or the network structure between the actors. We propose to model the latent structure of the network of actors as well as their rich interaction across events for real-world settings of medical and financial applications. Experimental results on both synthetic and real-world data showcase the efficacy of our approach.