This R package enables researchers to sample redistricting plans from a pre-specified target distribution using Sequential Monte Carlo and Markov Chain Monte Carlo algorithms. The package supports various constraints in the redistricting process, such as geographic compactness and population parity requirements. Tools for analysis, including computation of various summary statistics and plotting functionality, are also included.
Authors:
- Christopher T Kenny, [email protected] (Maintainer)
- Cory McCartan, [email protected]
- Ben Fifield, [email protected]
- Kosuke Imai, [email protected]
Contributors:
- Jun Kawahara, [email protected]
- Alex Tarr, [email protected]
- Michael Higgins, [email protected]
Papers:
- McCartan, C., & Imai, K. (Forthcoming). Sequential Monte Carlo for sampling balanced and compact redistricting plans. Annals of Applied Statistics.
- Fifield, B., Higgins, M., Imai, K., & Tarr, A. (2020). Automated redistricting simulation using Markov chain Monte Carlo. Journal of Computational and Graphical Statistics, 29(4), 715-728.
- Fifield, B., Imai, K., Kawahara, J., & Kenny, C. T. (2020). The essential role of empirical validation in legislative redistricting simulation. Statistics and Public Policy, 7(1), 52-68.
redist
is available on CRAN and can be installed using:
install.packages("redist")
You can also install the most recent development version of redist
(which is usually quite stable) using the remotes
package.
if (!require(remotes)) install.packages("remotes")
remotes::install_github("alarm-redist/redist@dev", dependencies=TRUE)
A basic analysis has two steps. First, you define a redistricting plan
using redist_map
. Then you simulate plans using one of the algorithm
functions: redist_smc
, redist_flip
, and redist_mergesplit
.
library(redist)
library(dplyr)
data(iowa)
# set a 0.1% population constraint
iowa_map = redist_map(iowa, existing_plan=cd_2010, pop_tol=0.001, total_pop = pop)
# simulate 500 plans using the SMC algorithm
iowa_plans = redist_smc(iowa_map, nsims=500)
#> SEQUENTIAL MONTE CARLO
#> Sampling 500 99-unit maps with 4 districts and population between 760827 and 762350.
After generating plans, you can use redist
’s plotting functions to
study the geographic and partisan characteristics of the simulated
ensemble.
library(ggplot2)
library(patchwork) # for plotting
redist.plot.plans(iowa_plans, draws=c("cd_2010", "1", "2", "3"), shp=iowa_map)
iowa_plans = iowa_plans %>%
mutate(Compactness = distr_compactness(iowa_map),
`Population deviation` = plan_parity(iowa_map),
`Democratic vote` = group_frac(iowa_map, dem_08, tot_08))
hist(iowa_plans, `Population deviation`) + hist(iowa_plans, Compactness) +
plot_layout(guides="collect") +
plot_annotation(title="Simulated plan characteristics")
redist.plot.scatter(iowa_plans, `Population deviation`, Compactness) +
labs(title="Population deviation and compactness by plan")
plot(iowa_plans, `Democratic vote`, size=0.5, color_thresh=0.5) +
scale_color_manual(values=c("black", "tomato2", "dodgerblue")) +
labs(title="Democratic vote share by district")
A more detailed introduction to redistricting methods and the package can be found in the Get Started page. The package vignettes contain more detailed information and guides to specific workflows.