Properties of Spatial Cox Process Models
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Abstract:
Probabilistic properties of Cox processes of relevance for statistical modeling and inference are studied. Particularly, we study the most important classes of Cox processes, including log Gaussian Cox processes, shot noise Cox processes, and permanent Cox processes. We consider moment properties and point process operations such as thinning, displacements, and superpositioning. We also discuss how to simulate specific Cox processes.
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Journal title
volume 2 issue 1
pages 89- 106
publication date 2005-09
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