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The sabre (Spatial
Association Between
REgionalizations) is an R package for calculating a
degree of spatial association between regionalizations or categorical
maps. This package offers support for sf
spatial objects,
and the following methods:
Two simple regionalizations would be used to show the basic concept of sabre.
library(sabre)
library(sf)
data("regions1")
data("regions2")
The first map, regions1
, has four regions (“r1”, “r2”,
“r3”, “r4”) of the same size and shape. The second one,
regions2
, contains three irregular regions where “z1” is
the smallest and “z3” being the largest. Our goal is to compare these
two regionalizations and calculate a degree of spatial association
between them.
It can be done with vmeasure_calc()
, which calculates
“V-measure”, “Homogeneity”, and “Completeness” and returns two
preprocessed input maps. This function requires, at least, four
arguments:
x
- an sf
object containing the first
regionalizationy
- an sf
object containing the second
regionalizationx_name
- a name of the column with regions names of the
first regionalizationy_name
- a name of the column with regions names of the
second regionalizationImportantly, both x
and y
must contain
POLYGON
s or MULTIPOLYGON
s and have the same
coordinate reference system.
There are also two additional arguments - B
and
precision
. If B
> 1 then completeness is
weighted more strongly than homogeneity, and if B
< 1
then homogeneity is weighted more strongly than completeness. By default
this value is 1. The vmeasure_calc()
function calculates
intersections of the input geometries internally using
sf::st_intersection()
, which depends on the coordinates
values precision. The precision
argument can be used when
vmeasure_calc
produces an error. For example,
precision = 1000
rounds values to the third decimal places
and precision = 0.001
uses values rounded to the nearest
1000.
= vmeasure_calc(x = regions1, y = regions2, x_name = z, y_name = z)
regions_vm
regions_vm#> The SABRE results:
#>
#> V-measure: 0.36
#> Homogeneity: 0.32
#> Completeness: 0.42
#>
#> The spatial objects can be retrieved with:
#> $map1 - the first map
#> $map2 - the second map
The result is a list with three metrics of spatial association -
V-measure
, Homogeneity
,
Completeness
- and two sf
objects with
preprocessed input maps - $map1
and $map2
. All
of the above metrics are between 0 and 1, where larger values are
desired. V-measure
is a measure of an overall spatial
correspondence between input maps. Homogeneity
shows an
average homogeneity of the regions in the second map with respect to the
regions in the first map. Completeness
is a function of
homogeneity of the regions in the first map with respect to the regions
in the second map. The spatial outputs, $map1
and
$map2
, have two columns. The first one contains regions’
names and the second one (rih
) describes regions’
inhomogeneities. Geometries of these spatial outputs show intersections
of the two input regionalizations.
For example, “Map1” shows that three regions have the same inhomogeneity of 0.48. This is due a fact that all of these three have two regions from the second map. The upper left region has a larger inhomogeneity of 0.86 as its area “belongs” to three different regions in the second map. More information about this method and its applications can be found in Nowosad and Stepinski (2018).
The sabre also allows for calculating a degree of
spatial association between regionalizations using the MapCurve method
(Hargrove et al., 2006). The mapcurves_calc()
function also
requires four arguments, x
, x_name
,
y
, and y_name
. It also accepts an additional
argument - precision
. All of these arguments are explained
in the previous section.
= mapcurves_calc(x = regions1, y = regions2, x_name = z, y_name = z)
regions_mc
regions_mc#> The MapCurves results:
#>
#> The goodness of fit: 0.61
#> Reference map: x
#>
#> The spatial objects can be retrieved with:
#> $map1 - the first map
#> $map2 - the second map
The mapcurves_calc()
returns a list with a value of the
goodness of fit (GOF), the map used as a reference, and two
sf
objects with preprocessed input maps -
$map1
and $map2
. Read Hargrove et al. (2006)
to learn more about this method.
These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.
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