Using redistmetrics

redistmetrics provides an interface for computing common redistricting measures and metrics. This covers the range of compactness measures, partisan gerrymandering metrics, county splits, and more. The goal is to provide a flexible and friendly (to existing R users) implementation of scores which are often used in academic research, litigation, public projects, and journalism. This package began as a set of functions in redist. While those features will remain, this package should offer friendlier examples by separating out measures into their own functions.

The package is developed and maintained by the ALARM Project, the ALgorithm-Assisted Redistricting Methodology Project,a research project under the direction of Kosuke Imai. The code in this package was developed by Christopher T. Kenny, Cory McCartan, and Ben Fifield. When using the package, please cite the package using the following:

#> To cite redistmetrics in publications use:
#>   Kenny C, McCartan C, Fifield B, Imai K (2023). _redistmetrics:
#>   Redistricting Metrics_. R package,
#>   <>.
#> A BibTeX entry for LaTeX users is
#>   @Manual{redistmetrics,
#>     title = {{redistmetrics}: Redistricting Metrics},
#>     author = {Christopher T. Kenny and Cory McCartan and Ben Fifield and Kosuke Imai},
#>     year = {2023},
#>     note = {R package},
#>     url = {},
#>   }


The package is fully open source and can be installed from GitHub:

if (!requireNamespace('remotes')) {


Once installed, the package can be loaded with:


For example purposes, we include data about New Hampshire’s political geography and demographics. The following data is included:

For users of redist, we also provide example data using redist objects, which offer some desirable features available via redist: - nh_map: a redist_map version of nh - nh_plans: a redist_plans version of nh_plans

Each of these can be loaded with the data() function.

Running your first measure

Given some data set where the districts are indicated, we can begin to compute measures.

We start with nh:


Functions in redistmetrics use common prefixes to indicate their usage. The prefixes in the current version are:

With these, we can pick a measure that we’d like to compute, say the Reock compactness, via comp_reock(). The major arguments are then the plans, or what the redistricting plan is, and the shp, which is the geography that the district is based on. Notably, comp_ functions also typically take an epsg argument which has the goal of converting the object to a projected map. This allows for more accurate measurement by more correctly describing the relative location of points on a map.

comp_reock(plans = nh$r_2020, shp = nh)
#> [1] 0.4444653 0.2502152

The output here is two Reock scores, the first being for the first district and the second for the second.

We can similar look at a partisan score, perhaps the efficiency gap, via part_egap(). This takes additional arguments. As before, it wants the plans defining the assignment to districts, along with a shp object, which just contains the next two columns: rvote (votes for Republicans) and dvote (votes for Democrats).

part_egap(plans = nh$r_2020, shp = nh, 
          rvote = nh$pre_20_rep_tru, dvote = nh$pre_20_dem_bid)
#> [1] 0.08171976 0.08171976

As the variable names suggest, we compute the Efficiency Gap using 2020 presidential data. Now, because the Efficiency Gap is defined for a plan, rather than by district, it is repeated here for each district for consistency.

If you want a plan-level metric to not be repeated, you can pipe through to by_plan.

part_egap(plans = nh$r_2020, shp = nh, 
          rvote = nh$pre_20_rep_tru, dvote = nh$pre_20_dem_bid) %>% 
#> [1] 0.08171976

For more information, view the other vignettes or the package website.