Publication | Closed Access
A Thinned Block Bootstrap Variance Estimation Procedure for Inhomogeneous Spatial Point Patterns
56
Citations
20
References
2007
Year
Variance EstimatorFirst-order Intensity FunctionStochastic GeometryPublic HealthEstimation TheoryComputational GeometryStatisticsGeometric ModelingBlock Bootstrap ProcedureDensity EstimationSpatial Statistical AnalysisGeographySpatial Data AcquisitionFunctional Data AnalysisQuantitative Spatial ModelNatural SciencesStatistical InferenceSpatio-temporal ModelSpatial Statistics
When modeling inhomogeneous spatial point patterns, it is of interest to fit a parametric model for the first-order intensity function (FOIF) of the process in terms of some measured covariates. Estimates for the regression coefficients, say , can be obtained by maximizing a Poisson maximum likelihood criterion. Little work has been done on the asymptotic distribution of except in some special cases. In this article we show that is asymptotically normal for a general class of mixing processes. To estimate the variance of , we propose a novel thinned block bootstrap procedure that assumes that the point process is second-order reweighted stationary. To apply this procedure, only the FOIF, and not any high-order terms of the process, needs to be estimated. We establish the consistency of the resulting variance estimator, and demonstrate its efficacy through simulations and an application to a real data example.
| Year | Citations | |
|---|---|---|
Page 1
Page 1