Scalable Nonparametric Bayesian Inference on Point Processes with Gaussian Processes
Machine Learning
2015-06-30 v2
Abstract
In this paper we propose the first non-parametric Bayesian model using Gaussian Processes to make inference on Poisson Point Processes without resorting to gridding the domain or to introducing latent thinning points. Unlike competing models that scale cubically and have a squared memory requirement in the number of data points, our model has a linear complexity and memory requirement. We propose an MCMC sampler and show that our model is faster, more accurate and generates less correlated samples than competing models on both synthetic and real-life data. Finally, we show that our model easily handles data sizes not considered thus far by alternate approaches.
Cite
@article{arxiv.1410.6834,
title = {Scalable Nonparametric Bayesian Inference on Point Processes with Gaussian Processes},
author = {Yves-Laurent Kom Samo and Stephen Roberts},
journal= {arXiv preprint arXiv:1410.6834},
year = {2015}
}
Comments
To appear at the International Conference on Machine Learning (ICML), 2015