
doi: 10.2307/1428060
We show that a Poisson cluster point process is a nearest-neighbour Markov point process [2] if the clusters have uniformly bounded diameter. It is typically not a finite-range Markov point process in the sense of Ripley and Kelly [12]. Furthermore, when the parent Poisson process is replaced by a Markov or nearest-neighbour Markov point process, the resulting cluster process is also nearest-neighbour Markov, provided all clusters are non-empty. In particular, the nearest-neighbour Markov property is preserved when points of the process are independently randomly translated, but not when they are randomly thinned.
cluster process, Inference from spatial processes, nearest-neighbour Markov process, Markov point process, Geometric probability and stochastic geometry, Point processes (e.g., Poisson, Cox, Hawkes processes), connected component relation
cluster process, Inference from spatial processes, nearest-neighbour Markov process, Markov point process, Geometric probability and stochastic geometry, Point processes (e.g., Poisson, Cox, Hawkes processes), connected component relation
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