Likelihood inference for unions of interacting discs

Jesper Møller, K. Helisova

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31 Citationer (Scopus)

Abstract

This is probably the first paper which discusses likelihood inference for a random set using a germ-grain model, where the individual grains are unobservable, edge effects occur and other complications appear. We consider the case where the grains form a disc process modelled by a marked point process, where the germs are the centres and the marks are the associated radii of the discs. We propose to use a recent parametric class of interacting disc process models, where the minimal sufficient statistic depends on various geometric properties of the random set, and the density is specified with respect to a given marked Poisson model (i.e. a Boolean model). We show how edge effects and other complications can be handled by considering a certain conditional likelihood. Our methodology is illustrated by analysing Peter Diggle's heather data set, where we discuss the results of simulation-based maximum likelihood inference and the effect of specifying different reference Poisson models.
OriginalsprogEngelsk
TidsskriftScandinavian Journal of Statistics
Vol/bind37
Udgave nummer3
Sider (fra-til)365-381
Antal sider17
ISSN0303-6898
DOI
StatusUdgivet - 2010

Bibliografisk note

Udgivelsesdato: Online 2009

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