Adding new segregation indices is not a big trouble. Please open an issue on GitHub to request an index to be added.
If you use the dplyr package, one pattern that works well is to use group_modify. Here, we compute the pairwise Black-White dissimilarity index for each state separately:
library("segregation")
library("dplyr")
schools00 %>%
filter(race %in% c("black", "white")) %>%
group_by(state) %>%
group_modify(~dissimilarity(data = .x,
group = "race",
unit = "school",
weight = "n"))
#> # A tibble: 3 × 3
#> # Groups: state [3]
#> state stat est
#> <fct> <chr> <dbl>
#> 1 A D 0.706
#> 2 B D 0.655
#> 3 C D 0.704A similar pattern works also well with data.table:
library("data.table")
schools00 = as.data.table(schools00)
schools00[
race %in% c("black", "white"),
dissimilarity(data = .SD, group = "race", unit = "school", weight = "n"),
by = .(state)]
#> state stat est
#> 1: A D 0.7063595
#> 2: B D 0.6548485
#> 3: C D 0.7042057To compute many decompositions at once, it’s easiest to combine the data for the two time points. For instance, here’s a dplyr solution to decompose the state-specific M indices between 2000 and 2005:
# helper function for decomposition
diff = function(df, group) {
data1 = filter(df, year == 2000)
data2 = filter(df, year == 2005)
mutual_difference(data1, data2, group = "race", unit = "school", weight = "n")
}
# add year indicators
schools00$year = 2000
schools05$year = 2005
combine = bind_rows(schools00, schools05)
combine %>%
group_by(state) %>%
group_modify(diff) %>%
head(5)
#> # A tibble: 5 × 3
#> # Groups: state [1]
#> state stat est
#> <fct> <chr> <dbl>
#> 1 A M1 0.409
#> 2 A M2 0.445
#> 3 A diff 0.0359
#> 4 A additions -0.0159
#> 5 A removals 0.0390Again, here’s also a data.table solution:
setDT(combine)
combine[, diff(.SD), by = .(state)] %>% head(5)
#> state stat est
#> 1: A M1 0.40859652
#> 2: A M2 0.44454379
#> 3: A diff 0.03594727
#> 4: A additions -0.01585879
#> 5: A removals 0.03903106tidycensus to compute segregation indices?Here are a few examples thanks to Kyle Walker, the author of the tidycensus package.
First, download the data:
library("tidycensus")
cook_data = get_acs(
geography = "tract",
variables = c(
white = "B03002_003",
black = "B03002_004",
asian = "B03002_006",
hispanic = "B03002_012"),
state = "IL",
county = "Cook")
#> Getting data from the 2015-2019 5-year ACSBecause this data is in “long” format, it’s easy to compute segregation indices:
# compute index of dissimilarity
cook_data %>%
filter(variable %in% c("black", "white")) %>%
dissimilarity(
group = "variable",
unit = "GEOID",
weight = "estimate")
#> stat est
#> 1: D 0.7860354
# compute multigroup M/H indices
cook_data %>%
mutual_total(
group = "variable",
unit = "GEOID",
weight = "estimate")
#> stat est
#> 1: M 0.5201728
#> 2: H 0.4177068Producing a map of local segregation scores is also not hard:
library("tigris")
library("ggplot2")
local_seg = mutual_local(cook_data,
group = "variable",
unit = "GEOID",
weight = "estimate",
wide = TRUE)
# download shapefile
seg_geom = tracts("IL", "Cook", cb = TRUE, progress_bar = FALSE) %>%
left_join(local_seg, by = "GEOID")
ggplot(seg_geom, aes(fill = ls)) +
geom_sf(color = NA) +
coord_sf(crs = 3435) +
scale_fill_viridis_c() +
theme_void() +
labs(title = "Local segregation scores for Cook County, IL",
fill = NULL)