Efficient non-parametric Bayesian hawkes processes
Date
Authors
Zhang, Rui
Walder, Christian
Rizoiu, Marian-Andrei
Xie, Lexing
Journal Title
Journal ISSN
Volume Title
Publisher
International Joint Conferences on Artificial Intelligence
Abstract
In this paper, we develop an efficient non-parametric Bayesian estimation of the kernel function of Hawkes processes. The non-parametric Bayesian approach is important because it provides flexible Hawkes kernels and quantifies their uncertainty. Our method is based on the cluster representation of Hawkes processes. Utilizing the stationarity of the Hawkes process, we efficiently sample random branching structures and thus, we split the Hawkes process into clusters of Poisson processes. We derive two algorithms --- a block Gibbs sampler and a maximum a posteriori estimator based on expectation maximization --- and we show that our methods have a linear time complexity, both theoretically and empirically. On synthetic data, we show our methods to be able to infer flexible Hawkes triggering kernels. On two large-scale Twitter diffusion datasets, we show that our methods outperform the current state-of-the-art in goodness-of-fit and that the time complexity is linear in the size of the dataset. We also observe that on diffusions related to online videos, the learned kernels reflect the perceived longevity for different content types such as music or pets videos.
Description
Citation
Collections
Source
Proceedings of the 28th International Joint Conference on Artificial Intelligence, IJCAI 2019
Type
Book Title
Entity type
Access Statement
Free Access via publisher website
License Rights
Restricted until
2099-12-31
Downloads
File
Description