ggwr {spgwr} | R Documentation |
Generalised geographically weighted regression
Description
The function implements generalised geographically weighted regression approach to exploring spatial non-stationarity for given global bandwidth and chosen weighting scheme.
Usage
ggwr(formula, data = list(), coords, bandwidth, gweight = gwr.Gauss,
adapt = NULL, fit.points, family = gaussian, longlat = NULL, type =
c("working", "deviance", "pearson", "response"))
Arguments
formula |
regression model formula as in |
data |
model data frame as in |
coords |
matrix of coordinates of points representing the spatial positions of the observations |
bandwidth |
bandwidth used in the weighting function, possibly
calculated by |
gweight |
geographical weighting function, at present
|
adapt |
either NULL (default) or a proportion between 0 and 1 of observations to include in weighting scheme (k-nearest neighbours) |
fit.points |
an object containing the coordinates of fit points; often an object from package sp; if missing, the coordinates given through the data argument object, or the coords argument are used |
family |
a description of the error distribution and link function to
be used in the model, see |
longlat |
TRUE if point coordinates are longitude-latitude decimal degrees, in which case distances are measured in kilometers; if x is a SpatialPoints object, the value is taken from the object itself |
type |
the type of residuals which should be returned. The alternatives are: "working" (default), "pearson", "deviance" and "response" |
Value
A list of class “gwr”:
SDF |
a SpatialPointsDataFrame (may be gridded) or SpatialPolygonsDataFrame object (see package "sp") with fit.points, weights, GWR coefficient estimates, dispersion if a "quasi"-family is used, and the residuals of type "type" in its "data" slot. |
lhat |
Leung et al. L matrix, here set to NA |
lm |
GLM global regression on the same model formula. |
bandwidth |
the bandwidth used. |
this.call |
the function call used. |
Note
The use of GWR on GLM is only at the initial proof of concept stage, nothing should be treated as an accepted method at this stage.
Author(s)
Roger Bivand Roger.Bivand@nhh.no
References
Fotheringham, A.S., Brunsdon, C., and Charlton, M.E., 2002, Geographically Weighted Regression, Chichester: Wiley; http://gwr.nuim.ie/
See Also
Examples
if (require(sf)) {
xx <- as(st_read(system.file("shapes/sids.gpkg", package="spData")[1]), "Spatial")
bw <- 144.4813
## Not run:
bw <- ggwr.sel(SID74 ~ I(NWBIR74/BIR74) + offset(log(BIR74)), data=xx,
family=poisson(), longlat=TRUE)
## End(Not run)
nc <- ggwr(SID74 ~ I(NWBIR74/BIR74) + offset(log(BIR74)), data=xx,
family=poisson(), longlat=TRUE, bandwidth=bw)
nc
## Not run:
nc <- ggwr(SID74 ~ I(NWBIR74/10000) + offset(log(BIR74)), data=xx,
family=poisson(), longlat=TRUE, bandwidth=bw)
nc
nc <- ggwr(SID74 ~ I(NWBIR74/10000) + offset(log(BIR74)), data=xx,
family=quasipoisson(), longlat=TRUE, bandwidth=bw)
nc
## End(Not run)
}