The function draws inferences about local spatial heteroscedasticity (LOSH) by means of the randomisation-based Monte-Carlo bootstrap proposed by Xu et al. (2014).
LOSH.mc(x, listw, a = 2, nsim = 99, zero.policy = NULL, na.action = na.fail,
spChk = NULL, adjust.n = TRUE, p.adjust.method = "none")
LOSH statistic
expectation of LOSH
variance of LOSH
the approximately chi-square distributed test statistics
local spatially weighted mean values
residuals about local spatially weighted mean values
p-values for Hi
obtained from a conditional bootstrap distribution
a numeric vector of the same length as the neighbours list in listw
a listw
object created for example by nb2listw
the exponent applied to the local residuals; the default value of 2 leads to a measure of heterogeneity in the spatial variance
the number of randomisations used in the bootstrap
default NULL, use global option value; if TRUE assign zero to the lagged value of zones without neighbours, if FALSE assign NA
a function (default na.fail
), can also be na.omit
or na.exclude
- in these cases the weights list will be subsetted to remove NAs in the data. It may be necessary to set zero.policy to TRUE because this subsetting may create no-neighbour observations. Note that only weights lists created without using the glist argument to nb2listw
may be subsetted. If na.pass
is used, zero is substituted for NA values in calculating the spatial lag. (Note that na.exclude will only work properly starting from R 1.9.0, na.omit and na.exclude assign the wrong classes in 1.8.*)
should the data vector names be checked against the spatial objects for identity integrity, TRUE, or FALSE, default NULL to use get.spChkOption()
default TRUE, if FALSE the number of observations is not adjusted for no-neighbour observations, if TRUE, the number of observations is adjusted
a character string specifying the probability value adjustment for multiple tests, default "none"; see p.adjustSP
. Note that the number of multiple tests for each region is only taken as the number of neighbours + 1 for each region, rather than the total number of regions.
René Westerholt rene.westerholt@tu-dortmund.de
The test calculates LOSH (see LOSH
) and estimates pseudo p-values from a conditional bootstrap. Thereby, the i-th value in each location is held fixed, whereas all other values are permuted nsim
times over all other spatial units.
Ord, J. K., & Getis, A. 2012. Local spatial heteroscedasticity (LOSH), The Annals of Regional Science, 48 (2), 529--539; Xu, M., Mei, C. L., & Yan, N. 2014. A note on the null distribution of the local spatial heteroscedasticity (LOSH) statistic. The Annals of Regional Science, 52 (3), 697--710.
LOSH
, LOSH.mc
data(columbus, package="spData")
resLOSH_mc <- LOSH.mc(columbus$CRIME, nb2listw(col.gal.nb), 2, 100)
summary(resLOSH_mc)
resLOSH_cs <- LOSH.cs(columbus$CRIME, nb2listw(col.gal.nb))
summary(resLOSH_cs)
plot(resLOSH_mc[,"Pr()"], resLOSH_cs[,"Pr()"])
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