Large-Scale Cox Process Inference Using Variational Fourier Features
Abstract
Gaussian process modulated Poisson processes provide a flexible framework for modeling spatiotemporal point patterns. So far this had been restricted to one dimension, binning to a pre-determined grid, or small data sets of up to a few thousand data points. Here we introduce Cox process inference based on Fourier features. This sparse representation induces global rather than local constraints on the function space and is computationally efficient. This allows us to formulate a grid-free approximation that scales well with the number of data points and the size of the domain. We demonstrate that this allows MCMC approximations to the non-Gaussian posterior. In practice, we find that Fourier features have more consistent optimization behavior than previous approaches. Our approximate Bayesian method can fit over 100 000 events with complex spatiotemporal patterns in three dimensions on a single GPU.
Cite
Text
John and Hensman. "Large-Scale Cox Process Inference Using Variational Fourier Features." International Conference on Machine Learning, 2018.Markdown
[John and Hensman. "Large-Scale Cox Process Inference Using Variational Fourier Features." International Conference on Machine Learning, 2018.](https://mlanthology.org/icml/2018/john2018icml-largescale/)BibTeX
@inproceedings{john2018icml-largescale,
title = {{Large-Scale Cox Process Inference Using Variational Fourier Features}},
author = {John, St and Hensman, James},
booktitle = {International Conference on Machine Learning},
year = {2018},
pages = {2362-2370},
volume = {80},
url = {https://mlanthology.org/icml/2018/john2018icml-largescale/}
}