Tractable Nonparametric Bayesian Inference in Poisson Processes with Gaussian Process Intensities

Abstract

The inhomogeneous Poisson process is a point process that has varying intensity across its domain (usually time or space). For nonparametric Bayesian modeling, the Gaussian process is a useful way to place a prior distribution on this intensity. The combination of an Poisson process and GP is known as a Gaussian Cox process, or doubly-stochastic Poisson process. Likelihood-based inference in these models requires an intractable integral over an infinite-dimensional random function. In this paper we present the first approach to Gaussian Cox processes in which it is possible to perform inference without introducing approximations or finite-dimensional proxy distributions. We call our method the Sigmoidal Gaussian Cox Process, which uses a generative model for Poisson data to enable tractable inference via Markov chain Monte Carlo. We compare our methods to competing methods on synthetic data and also apply it to several real-world data sets.

Cite

Text

Adams et al. "Tractable Nonparametric Bayesian Inference in Poisson Processes with Gaussian Process Intensities." International Conference on Machine Learning, 2009. doi:10.1145/1553374.1553376

Markdown

[Adams et al. "Tractable Nonparametric Bayesian Inference in Poisson Processes with Gaussian Process Intensities." International Conference on Machine Learning, 2009.](https://mlanthology.org/icml/2009/adams2009icml-tractable/) doi:10.1145/1553374.1553376

BibTeX

@inproceedings{adams2009icml-tractable,
  title     = {{Tractable Nonparametric Bayesian Inference in Poisson Processes with Gaussian Process Intensities}},
  author    = {Adams, Ryan Prescott and Murray, Iain and MacKay, David J. C.},
  booktitle = {International Conference on Machine Learning},
  year      = {2009},
  pages     = {9-16},
  doi       = {10.1145/1553374.1553376},
  url       = {https://mlanthology.org/icml/2009/adams2009icml-tractable/}
}