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Title: Spatial prediction of the mark of a location-dependent marked point process: How the use of a parametric model may improve prediction (English)
Author: Mrkvička, Tomáš
Author: Goreaud, François
Author: Chadoeuf, Joël
Language: English
Journal: Kybernetika
ISSN: 0023-5954
Volume: 47
Issue: 5
Year: 2011
Pages: 696-714
Summary lang: English
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Category: math
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Summary: We discuss the prediction of a spatial variable of a multivariate mark composed of both dependent and explanatory variables. The marks are location-dependent and they are attached to a point process. We assume that the marks are assigned independently, conditionally on an unknown underlying parametric field. We compare (i) the classical non-parametric Nadaraya-Watson kernel estimator based on the dependent variable (ii) estimators obtained under an assumption of local parametric model where explanatory variables of the local model are estimated through kernel estimation and (iii) a kernel estimator of the result of the parametric model, supposed here to be a Uniformly Minimum Variance Unbiased Estimator derived under the local parametric model when complete and sufficient statistics are available. The comparison is done asymptotically and by simulations in special cases. The procedure for better estimator selection is then illustrated on a real-life data set. (English)
Keyword: kernel estimation
Keyword: marked Poisson process
Keyword: mean mark estimation
Keyword: location-dependent mark distribution
Keyword: segment process
MSC: 62G05
MSC: 62M30
idZBL: Zbl 1238.62111
idMR: MR2850457
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Date available: 2011-11-10T15:36:18Z
Last updated: 2013-09-22
Stable URL: http://hdl.handle.net/10338.dmlcz/141685
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