rHardcore | R Documentation |
Generate a random pattern of points, a simulated realisation of the Hardcore process, using a perfect simulation algorithm.
rHardcore(beta, R = 0, W = owin(), expand=TRUE, nsim=1, drop=TRUE)
beta |
intensity parameter (a positive number). |
R |
hard core distance (a non-negative number). |
W |
window (object of class |
expand |
Logical. If |
nsim |
Number of simulated realisations to be generated. |
drop |
Logical. If |
This function generates a realisation of the
Hardcore point process in the window W
using a ‘perfect simulation’ algorithm.
The Hardcore process is a model for strong spatial inhibition.
Two points of the process are forbidden to lie closer than
R
units apart.
The Hardcore process is the special case of the Strauss process
(see rStrauss
)
with interaction parameter \gamma
equal to zero.
The simulation algorithm used to generate the point pattern
is ‘dominated coupling from the past’
as implemented by Berthelsen and \Moller (2002, 2003).
This is a ‘perfect simulation’ or ‘exact simulation’
algorithm, so called because the output of the algorithm is guaranteed
to have the correct probability distribution exactly (unlike the
Metropolis-Hastings algorithm used in rmh
, whose output
is only approximately correct).
There is a tiny chance that the algorithm will run out of space before it has terminated. If this occurs, an error message will be generated.
If nsim = 1
, a point pattern (object of class "ppp"
).
If nsim > 1
, a list of point patterns.
, based on original code for the Strauss process by Kasper Klitgaard Berthelsen.
Berthelsen, K.K. and \Moller, J. (2002) A primer on perfect simulation for spatial point processes. Bulletin of the Brazilian Mathematical Society 33, 351-367.
Berthelsen, K.K. and \Moller, J. (2003) Likelihood and non-parametric Bayesian MCMC inference for spatial point processes based on perfect simulation and path sampling. Scandinavian Journal of Statistics 30, 549-564.
\Moller, J. and Waagepetersen, R. (2003). Statistical Inference and Simulation for Spatial Point Processes. Chapman and Hall/CRC.
rmh
,
rStrauss
,
rStraussHard
,
rDiggleGratton
.
rDGS
,
rPenttinen
.
For fitting the model, see
Hardcore
.
X <- rHardcore(0.05,1.5,square(50))
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