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Bayesian Computation for Log-Gaussian Cox Processes--A Comparative Analysis of Methods

Authors :
Teng, Ming
Nathoo, Farouk S.
Johnson, Timothy D.
Publication Year :
2017

Abstract

The Log-Gaussian Cox Process is a commonly used model for the analysis of spatial point patterns. Fitting this model is difficult because of its doubly-stochastic property, i.e., it is an hierarchical combination of a Poisson process at the first level and a Gaussian Process at the second level. Different methods have been proposed to estimate such a process, including traditional likelihood-based approaches as well as Bayesian methods. We focus here on Bayesian methods and several approaches that have been considered for model fitting within this framework, including Hamiltonian Monte Carlo, the Integrated nested Laplace approximation, and Variational Bayes. We consider these approaches and make comparisons with respect to statistical and computational efficiency. These comparisons are made through several simulations studies as well as through applications examining both ecological data and neuroimaging data.

Subjects

Subjects :
Statistics - Computation

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1701.00857
Document Type :
Working Paper