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Statements

Subject Item
n2:RIV%2F00216208%3A11320%2F11%3A10102952%21RIV12-GA0-11320___
rdf:type
skos:Concept n17:Vysledek
dcterms:description
Large data sets in the form of point patterns are frequently encountered in practice and need to be analyzed, e.g. by fitting parametric models. We consider stationary spatial Cox point processes and give overview of moment estimation methods suitable for fitting this class of models to the data - the minimum contrast method and the composite likelihood and the Palm likelihood approaches. These methods represent a simulation-free faster-to-compute alternative to the computationally intense maximum likelihood estimation. Large data sets in the form of point patterns are frequently encountered in practice and need to be analyzed, e.g. by fitting parametric models. We consider stationary spatial Cox point processes and give overview of moment estimation methods suitable for fitting this class of models to the data - the minimum contrast method and the composite likelihood and the Palm likelihood approaches. These methods represent a simulation-free faster-to-compute alternative to the computationally intense maximum likelihood estimation.
dcterms:title
On Moment Estimation Methods for Spatial Cox Processes On Moment Estimation Methods for Spatial Cox Processes
skos:prefLabel
On Moment Estimation Methods for Spatial Cox Processes On Moment Estimation Methods for Spatial Cox Processes
skos:notation
RIV/00216208:11320/11:10102952!RIV12-GA0-11320___
n17:predkladatel
n18:orjk%3A11320
n3:aktivita
n20:S n20:P
n3:aktivity
P(GAP201/10/0472), S
n3:dodaniDat
n12:2012
n3:domaciTvurceVysledku
n7:1211439
n3:druhVysledku
n4:D
n3:duvernostUdaju
n13:S
n3:entitaPredkladatele
n21:predkladatel
n3:idSjednocenehoVysledku
218071
n3:idVysledku
RIV/00216208:11320/11:10102952
n3:jazykVysledku
n5:eng
n3:klicovaSlova
minimum contrast method; palm likelihood; composite likelihood; spatial cox processes; moment estimation methods
n3:klicoveSlovo
n9:composite%20likelihood n9:spatial%20cox%20processes n9:minimum%20contrast%20method n9:moment%20estimation%20methods n9:palm%20likelihood
n3:kontrolniKodProRIV
[FB1D35CC6341]
n3:mistoKonaniAkce
Praha
n3:mistoVydani
Prague
n3:nazevZdroje
WDS'11 Proceedings of Contributed Papers: Part I - Mathematics and Computer Sciences
n3:obor
n8:BA
n3:pocetDomacichTvurcuVysledku
1
n3:pocetTvurcuVysledku
1
n3:projekt
n15:GAP201%2F10%2F0472
n3:rokUplatneniVysledku
n12:2011
n3:tvurceVysledku
Dvořák, Jiří
n3:typAkce
n22:CST
n3:zahajeniAkce
2011-05-31+02:00
s:numberOfPages
6
n19:hasPublisher
Matfyzpress
n14:isbn
978-80-7378-184-2
n11:organizacniJednotka
11320