Fast Covariance Estimation for Innovations Computed from a Spatial Gibbs Point Process

Fast Covariance Estimation for Innovations Computed from a Spatial Gibbs Point Process

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Article ID: iaor201523671
Volume: 40
Issue: 4
Start Page Number: 669
End Page Number: 684
Publication Date: Dec 2013
Journal: Scandinavian Journal of Statistics
Authors: ,
Keywords: statistics: inference
Abstract:

In this paper, we derive an exact formula for the covariance of two innovations computed from a spatial Gibbs point process and suggest a fast method for estimating this covariance. We show how this methodology can be used to estimate the asymptotic covariance matrix of the maximum pseudo‐likelihood estimator of the parameters of a spatial Gibbs point process model. This allows us to construct asymptotic confidence intervals for the parameters. We illustrate the efficiency of our procedure in a simulation study for several classical parametric models. The procedure is implemented in the statistical software R, and it is included in spatstat, which is an R package for analyzing spatial point patterns.

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