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spatstat (version 1.48-0)

simulate.kppm: Simulate a Fitted Cluster Point Process Model

Description

Generates simulated realisations from a fitted cluster point process model.

Usage

"simulate"(object, nsim = 1, seed=NULL, ..., window=NULL, covariates=NULL, verbose=TRUE, retry=10, drop=FALSE)

Arguments

object
Fitted cluster point process model. An object of class "kppm".
nsim
Number of simulated realisations.
seed
an object specifying whether and how to initialise the random number generator. Either NULL or an integer that will be used in a call to set.seed before simulating the point patterns.
...
Ignored.
window
Optional. Window (object of class "owin") in which the model should be simulated.
covariates
Optional. A named list containing new values for the covariates in the model.
verbose
Logical. Whether to print progress reports (when nsim > 1).
retry
Number of times to repeat the simulation if it fails (e.g. because of insufficient memory).
drop
Logical. If nsim=1 and drop=TRUE, the result will be a point pattern, rather than a list containing a point pattern.

Value

A list of length nsim containing simulated point patterns (objects of class "ppp").The return value also carries an attribute "seed" that captures the initial state of the random number generator. See Details.

Details

This function is a method for the generic function simulate for the class "kppm" of fitted cluster point process models. Simulations are performed by rThomas, rMatClust or rLGCP depending on the model.

The return value is a list of point patterns. It also carries an attribute "seed" that captures the initial state of the random number generator. This follows the convention used in simulate.lm (see simulate). It can be used to force a sequence of simulations to be repeated exactly, as shown in the examples for simulate.

See Also

kppm, rThomas, rMatClust, rLGCP, simulate.ppm, simulate

Examples

Run this code
  data(redwood)
  fit <- kppm(redwood, ~1, "Thomas")
  simulate(fit, 2)

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