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surveillance (version 1.20.3)

twinstim_simEndemicEvents: Quick Simulation from an Endemic-Only twinstim

Description

In endemic-only twinstim models, the conditional intensity is a piecewise constant function independent from the history of the process. This allows for a much more efficient simulation algorithm than via Ogata's modified thinning as in the general simulate.twinstim method.

Usage

simEndemicEvents(object, tiles)

Value

a SpatialPointsDataFrame

Arguments

object

an object of class "twinstim" (with the model component retained; otherwise try object <- update(object, model = TRUE)).

tiles

an object inheriting from "SpatialPolygons", which represents the tiles of the original data's stgrid (see, e.g., levels(environment(object)$gridTiles)).

Author

Sebastian Meyer

See Also

the general simulation method simulate.twinstim

Examples

Run this code
data("imdepi", "imdepifit")
load(system.file("shapes", "districtsD.RData", package="surveillance"))

## Fit an endemic-only twinstim()
m_noepi <- update(imdepifit, epidemic = ~0, siaf = NULL, model = TRUE,
                  T = 120)  # using a restricted time range, for speed

## Simulate events from the above endemic model
set.seed(1)
s1 <- simEndemicEvents(m_noepi, tiles = districtsD)
class(s1)  # just a "SpatialPointsDataFrame"
summary(s1)
plot(imdepi$W, lwd = 2); plot(s1, col = s1$type, cex = 0.5, add = TRUE)

if (surveillance.options("allExamples")) {
## the general simulation method takes longer
s0 <- simulate(m_noepi, seed = 1, data = imdepi, tiles = districtsD)
class(s0)  # gives a full "simEpidataCS" with several methods applicable
methods(class = "epidataCS")
plot(s0, "time")
plot(s0, "space", points.args = list(pch = 3), lwd = 2)
}

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