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<!-- README.md is generated from README.Rmd. Please edit that file -->geocmeans <img src='man/figures/geocmeans_logo.png' align="right" style = 'height:138px;'/>
An R package to perform Spatial Fuzzy C-means.
<!-- badges: start --> <!-- badges: end -->The website of the package is available here
Breaking news
Here we are! We are moving from maptools
, sp
, rgeos
, raster
and
rgdal
to sf
, terra
and tmap
. All the functions and the
documentation were modified accordingly. If you spot an error or a bug,
please open an issue on github.
Installation
The stable version of geocmeans
is available on CRAN. You can install
it with the command below.
install.packages("geocmeans")
You can install a development version of the geocmeans
package using
the command below.
remotes::install_github(repo = "JeremyGelb/geocmeans", build_vignettes = TRUE, force = TRUE)
Authors
Jeremy Gelb, Laboratoire d’Équité Environnemental INRS (CANADA), Email: jeremy.gelb@ucs.inrs.ca
Contributors
Philippe Apparicio, Laboratoire d’Équité Environnemental INRS (CANADA), Email: philippe.apparicio@ucs.inrs.ca
About the package
Provides functions to apply Spatial Fuzzy c-means Algorithm, visualize and interpret results. This method is well suited when the user wants to analyze data with a fuzzy clustering algorithm and to account for the spatial dimension of the dataset. In addition, indexes for measuring the spatial consistency and classification quality are proposed. The algorithms were developed first for brain imagery as described in the articles of Cai and al. 2007 and Zaho and al. 2013. Gelb and Apparicio proposed to apply the method to perform a socio-residential and environmental taxonomy in Lyon (France). The methods can be applied to dataframes or to rasters.
Fuzzy classification algorithms
Four Fuzzy classification algorithms are proposed :
- FCM: Fuzzy C-Means, with the function
CMeans
- GFCM: Generalized Fuzzy C-Means, with the function
GFCMeans
- SFCM: Spatial Fuzzy C-Means, with the function
SFCMeans
- SGFCM: Spatial Generalized Fuzzy C-Means, with the function
SGFCMeans
Each function return a membership matrix, the data used for the classification (scaled if required) and the centers of the clusters.
For each algorithm, it is possible to calculate a “robust version” and
to add a noise group (used to catch outliers). See the parameters
robust
and noise_cluser
in the documentation for more details.
Parameter selections
The algorithms available require different parameters to be fixed by the
user. The function selectParameters
is a useful tool to compare the
results of different combinations of parameters. A multicore version,
selectParameters.mc
, using a plan from the package future
is also
available to speed up the calculus.
Classification quality
Many indices of classification quality can be calculated with the
function calcqualityIndexes
:
- Silhouette.index: the silhouette index (
fclust::SIL.F
) - Partition.entropy: the partition entropy index (
fclust::PE
) - Partition.coeff: the partition entropy coefficient (
fclust::PC
) - Modified.partition.coeff: the modified partition entropy coefficient
(
fclust::MPC
) - XieBeni.index: the Xie and Beni index (
fclust::XB
) - FukuyamaSugeno.index: the Fukuyama and Sugeno index
(
geocmeans::calcFukuyamaSugeno
) - DavidBoudlin.index: the David-Bouldin index
(
geocmeans::calcDavidBouldin
) - CalinskiHarabasz.index: the Calinski-Harabasz index
(
geocmeans::calcCalinskiHarabasz
) - GD43.index and GD53.index: two version of the generalized Dunn
index (
geocmeans::calcGD43
andcalcGD53
) - Negentropy.index: the Negentropy Increment index
(
geocmeans::calcNegentropyI
) - Explained.inertia: the percentage of total inertia explained by the solution
Classification consistency
To assess the stability of the obtained clusters, a function for
bootstrap validation is proposed: boot_group_validation
. The results
can be used to verify if the obtained clusters are stable and how much
their centres vary.
Reproductibility
Clustering methods like CMeans depend on the initial centers selected.
In geocmeans
, they are selected randomly, and two runs of the
functions can yield different results. To facilitate the
reproductibility of the results, the main functions of the package
(CMeans
, GFCMeans
, SFCMeans
, SGFCMeans
, selectParameters
,
selectParameters.mc
) have a seed
parameter. It can be set by the
user to ensure that the results of the functions are exactly the same.
Interpretation
Several functions are also available to facilitate the interpretation of the classification:
- summary statistics for each cluster:
summarizeClusters
(also accessible with the generic functionsummary
) - spider charts:
spiderPlots
- violin plots:
violinPlots
- maps of the membership matrix:
mapClusters
(support polygon, points and polylines)
There is also a shiny app that can be used to go deeper in the result
interpretation. It requires the packages shiny
, leaflet
, bslib
,
plotly
, shinyWidgets
, car
.
Spatial diagnostic
Several spatial indices can be calculated to have a better spatial
understanding of the obtained clusters, like the global or local Moran I
calculated on the membership values, or the join-count-test on the most
likely group for each observation. ELSA and Fuzzy ELSA statistics can
also be calculated to identify areas with high or low multidimensional
spatial autocorrelation in the membership values. See functions
spConsistency
, calcELSA
, calcFuzzyELSA
and spatialDiag
.
We proposed an index to quantify the spatial inconsistency of a
classification (Gelb and
Apparicio). If in a
classification close observations tend to belong to the same group, then
the value of the index is close to 0. If the index is close to 1, then
the belonging to groups is randomly distributed in space. A value higher
than one can happen in the case of negative spatial autocorrelation. The
index is described in the vignette adjustinconsistency
. The function
spatialDiag
does a complete spatial diagnostic of the membership
matrix resulting from a classification.
Examples
Detailed examples are given in the vignette introduction
vignette("introduction","geocmeans")
Testing
If you would like to install and run the unit tests interactively,
include INSTALL_opts = "--install-tests"
in the installation code.
remotes::install_github(repo = "JeremyGelb/geocmeans", build_vignettes = TRUE, force = TRUE, INSTALL_opts = "--install-tests")
testthat::test_package("geocmeans", reporter = "stop")
Contribute
To contribute to geocmeans
, please follow these
guidelines.
Please note that the geocmeans
project is released with a Contributor
Code of
Conduct.
By contributing to this project, you agree to abide by its terms.
License
geocmeans
version 0.3.4 is licensed under GPL2
License.