Mutually Regressive Point Processes

Abstract

Many real-world data represent sequences of interdependent events unfolding over time. They can be modeled naturally as realizations of a point process. Despite many potential applications, existing point process models are limited in their ability to capture complex patterns of interaction. Hawkes processes admit many efficient inference algorithms, but are limited to mutually excitatory effects. Non- linear Hawkes processes allow for more complex influence patterns, but for their estimation it is typically necessary to resort to discrete-time approximations that may yield poor generative models. In this paper, we introduce the first general class of Bayesian point process models extended with a nonlinear component that allows both excitatory and inhibitory relationships in continuous time. We derive a fully Bayesian inference algorithm for these processes using Polya-Gamma augmentation and Poisson thinning. We evaluate the proposed model on single and multi-neuronal spike train recordings. Results demonstrate that the proposed model, unlike existing point process models, can generate biologically-plausible spike trains, while still achieving competitive predictive likelihoods.

Cite

Text

Apostolopoulou et al. "Mutually Regressive Point Processes." Neural Information Processing Systems, 2019.

Markdown

[Apostolopoulou et al. "Mutually Regressive Point Processes." Neural Information Processing Systems, 2019.](https://mlanthology.org/neurips/2019/apostolopoulou2019neurips-mutually/)

BibTeX

@inproceedings{apostolopoulou2019neurips-mutually,
  title     = {{Mutually Regressive Point Processes}},
  author    = {Apostolopoulou, Ifigeneia and Linderman, Scott and Miller, Kyle and Dubrawski, Artur},
  booktitle = {Neural Information Processing Systems},
  year      = {2019},
  pages     = {5115-5126},
  url       = {https://mlanthology.org/neurips/2019/apostolopoulou2019neurips-mutually/}
}