| dmst.sim | R Documentation | 
dmst.test on simulated datadmst.sim efficiently performs
dmst.test on a simulated data set.  The
function is meant to be used internally by the
dmst.test function, but is informative for
better understanding the implementation of the test.
dmst.sim(nsim = 1, nn, ty, ex, w, pop, max_pop, cl = NULL)
nsim | 
 A positive integer indicating the number of simulations to perform.  | 
nn | 
 A list of distance-based nearest neighbors,
preferably from the   | 
ty | 
 The total number of cases in the study area.  | 
ex | 
 The expected number of cases for each region. The default is calculated under the constant risk hypothesis.  | 
w | 
 A binary spatial adjacency matrix for the regions.  | 
pop | 
 The population size associated with each region.  | 
max_pop | 
 The population upperbound (in total population) for a candidate zone.  | 
cl | 
 A cluster object created by   | 
A vector with the maximum test statistic for each simulated data set.
data(nydf)
data(nyw)
coords <- with(nydf, cbind(longitude, latitude))
cases <- floor(nydf$cases)
pop <- nydf$pop
ty <- sum(cases)
ex <- ty / sum(pop) * pop
d <- gedist(coords, longlat = TRUE)
nn <- nndist(d, ubd = 0.05)
max_pop <- sum(pop) * 0.25
tsim <- dmst.sim(1, nn, ty, ex, nyw,
  pop = pop,
  max_pop = max_pop
)
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