giniCI: Gini-based Composite Indicators
giniCI provides an implementation of Gini-based weighting approaches
for composite indicator construction. The package includes functions for
normalization, aggregation, and ranking comparison to support
multidimensional measurement based on distributional dispersion across
individual components.
Installation
You can install the latest released version from CRAN:
install.packages("giniCI")Alternatively, you can install the development version from GitHub:
devtools::install_github("novidu/giniCI", build_vignettes = TRUE)Usage
Below is a simple example of constructing Gini-based composite
indicators. For more details, please take a look at the package
vignettes using browseVignettes("giniCI").
library(giniCI)
data(bli)
# Indicator polarity
bli.pol = c("neg", "pos", "pos", "pos", "pos", "neg",
"pos", "pos", "pos", "neg", "pos")
# Goalpost normalization using time factors and a reference time
bli.norm.2014 <- normalize(inds = bli[, 3:13], method = "goalpost",
ind.pol = bli.pol, time = bli$YEAR,
ref.time = 2014)
# Composite indices
ci.gini <- giniCI(bli.norm.2014, method = "gini",
ci.pol = "pos", time = bli$YEAR, ref.time = 2014,
only.ci = TRUE)
ci.reci <- giniCI(bli.norm.2014, method = "reci", agg = "geo",
ci.pol = "pos", time = bli$YEAR, ref.time = 2014,
only.ci = TRUE)
# Ranking comparison
ci.comp <- rankComp(ci.gini, ci.reci, id = bli$COUNTRY, time = bli$YEAR)
summary(ci.comp)Authors and Contributions
Authors: Viet Duong Nguyen (maintainer), Chiara Gigliarano, and Mariateresa Ciommi
Suggested improvements, as well as technical issues and bug reports, are highly welcome.
Please direct development questions to viet-duong.nguyen@outlook.com.
References
Ciommi, M., Gigliarano, C., Emili, A., Taralli, S., & Chelli, F. M. (2017). A new class of composite indicators for measuring well-being at the local level: An application to the Equitable and Sustainable Well-being (BES) of the Italian Provinces. Ecological Indicators, 76, 281–296. https://doi.org/10.1016/j.ecolind.2016.12.050