The goal of the forcats package is to provide a suite of useful tools that solve common problems with factors. Factors are useful when you have categorical data, variables that have a fixed and known set of values, and when you want to display character vectors in non-alphabetical order. If you want to learn more, the best place to start is the chapter on factors in R for Data Science.
library(dplyr)
library(ggplot2)
library(forcats)Let’s try answering the question, “what are the most common hair colors of star wars characters?” Let’s start off by making a bar plot:
ggplot(starwars, aes(y = hair_color)) + 
  geom_bar()That’s okay, but it would be more helpful the graph was ordered by
count. This is a case of an unordered categorical
variable where we want it ordered by its frequency. To do so, we can use
the function fct_infreq():
ggplot(starwars, aes(y = fct_infreq(hair_color))) + 
  geom_bar()Note that fct_infreq() it automatically puts NA at the
top, even though that doesn’t have the smallest number of entries.
It’s a little surprising that the NA bar isn’t ordered
by frequency. To understand why we need to make a brief digression to
discuss NAs in values vs. NAs in levels
NAss in levels and valuesThere are two ways to represent a missing value in a factor:
You can include it in the values of the factor; it does not
appear in the levels and is.na() reports it as missing.
This is how missing values are encoded in a factor by default:
f <- factor(c("x", "y", NA))
levels(f)
#> [1] "x" "y"
is.na(f)
#> [1] FALSE FALSE  TRUEYou can include it in the levels of the factor and
is.na() does not report it as missing. This requires a
little more work to create, because, by default, factor()
uses exclude = NA, meaning that missing values are not
included in the levels. You can force NA to be included by
setting exclude = NULL:
f <- factor(c("x", "y", NA), exclude = NULL)
levels(f)
#> [1] "x" "y" NA
is.na(f)
#> [1] FALSE FALSE FALSENAs in the values tend to be best for data analysis,
since is.na() works as you’d expect. NAs in
the levels can be useful for display if you need to control where they
appear in a table or a plot.
To fix the issue above, we can use
fct_na_value_to_level() to convert the NA in
the value to an NA in the levels. Then they appear where you’d
expect:
ggplot(starwars, aes(y = fct_infreq(fct_na_value_to_level(hair_color)))) + 
  geom_bar() + 
  labs(y = "Hair color")(If you need the opposite operation, you can use
fct_na_level_to_value().)
Let’s take a look at skin color now:
starwars %>%
  count(skin_color, sort = TRUE)
#> # A tibble: 31 × 2
#>    skin_color     n
#>    <chr>      <int>
#>  1 fair          17
#>  2 light         11
#>  3 dark           6
#>  4 green          6
#>  5 grey           6
#>  6 pale           5
#>  7 brown          4
#>  8 blue           2
#>  9 blue, grey     2
#> 10 orange         2
#> # … with 21 more rowsWe see that there’s 31 different skin colors - if we want to make a
plot this would be way too many to display! Let’s reduce it to only be
the top 5. We can use fct_lump() to “lump” all the
infrequent colors into one factor, “other.” The argument n
is the number of levels we want to keep.
starwars %>%
  mutate(skin_color = fct_lump(skin_color, n = 5)) %>%
  count(skin_color, sort = TRUE)
#> # A tibble: 6 × 2
#>   skin_color     n
#>   <fct>      <int>
#> 1 Other         41
#> 2 fair          17
#> 3 light         11
#> 4 dark           6
#> 5 green          6
#> 6 grey           6We could also have used prop instead, which keeps all
the levels that appear at least prop of the time. For
example, let’s keep skin colors that at least 10% of the characters
have:
starwars %>%
  mutate(skin_color = fct_lump(skin_color, prop = .1)) %>%
  count(skin_color, sort = TRUE)
#> # A tibble: 3 × 2
#>   skin_color     n
#>   <fct>      <int>
#> 1 Other         59
#> 2 fair          17
#> 3 light         11Only light and fair remain; everything else is other.
If you wanted to call it something than “other”, you can change it
with the argument other_level:
starwars %>%
  mutate(skin_color = fct_lump(skin_color, prop = .1, other_level = "extra")) %>%
  count(skin_color, sort = TRUE)
#> # A tibble: 3 × 2
#>   skin_color     n
#>   <fct>      <int>
#> 1 extra         59
#> 2 fair          17
#> 3 light         11What if we wanted to see if the average mass differed by eye color?
We’ll only look at the 6 most popular eye colors and remove
NAs.
avg_mass_eye_color <- starwars %>%
  mutate(eye_color = fct_lump(eye_color, n = 6)) %>%
  group_by(eye_color) %>%
  summarise(mean_mass = mean(mass, na.rm = TRUE))
avg_mass_eye_color
#> # A tibble: 7 × 2
#>   eye_color mean_mass
#>   <fct>         <dbl>
#> 1 black          76.3
#> 2 blue           86.5
#> 3 brown          66.1
#> 4 orange        282. 
#> 5 red            81.4
#> 6 yellow         81.1
#> 7 Other          68.4It looks like people (or at least one person) with orange eyes are
definitely heavier! If we wanted to make a graph, it would be nice if it
was ordered by mean_mass. We can do this with
fct_reorder(), which reorders one variable by another.
avg_mass_eye_color %>%
  mutate(eye_color = fct_reorder(eye_color, mean_mass)) %>%
  ggplot(aes(x = eye_color, y = mean_mass)) + 
  geom_col()Let’s switch to using another dataset, gss_cat, the
general social survey. What is the income distribution among the
respondents?
gss_cat %>%
  count(rincome)
#> # A tibble: 16 × 2
#>    rincome            n
#>    <fct>          <int>
#>  1 No answer        183
#>  2 Don't know       267
#>  3 Refused          975
#>  4 $25000 or more  7363
#>  5 $20000 - 24999  1283
#>  6 $15000 - 19999  1048
#>  7 $10000 - 14999  1168
#>  8 $8000 to 9999    340
#>  9 $7000 to 7999    188
#> 10 $6000 to 6999    215
#> 11 $5000 to 5999    227
#> 12 $4000 to 4999    226
#> 13 $3000 to 3999    276
#> 14 $1000 to 2999    395
#> 15 Lt $1000         286
#> 16 Not applicable  7043Notice that the income levels are in the correct order - they start
with the non-answers and then go from highest to lowest. This is the
same order you’d see if you plotted it as a bar chart. This is not a
coincidence. When you’re working with ordinal data, where there is an
order, you can have an ordered factor. You can examine them with the
base function levels(), which prints them in order:
levels(gss_cat$rincome)
#>  [1] "No answer"      "Don't know"     "Refused"        "$25000 or more"
#>  [5] "$20000 - 24999" "$15000 - 19999" "$10000 - 14999" "$8000 to 9999" 
#>  [9] "$7000 to 7999"  "$6000 to 6999"  "$5000 to 5999"  "$4000 to 4999" 
#> [13] "$3000 to 3999"  "$1000 to 2999"  "Lt $1000"       "Not applicable"But what if your factor came in the wrong order? Let’s simulate that
by reordering the levels of rincome randomly with
fct_shuffle():
reshuffled_income <- gss_cat$rincome %>%
  fct_shuffle()
levels(reshuffled_income)
#>  [1] "Refused"        "$1000 to 2999"  "$7000 to 7999"  "$10000 - 14999"
#>  [5] "$25000 or more" "$15000 - 19999" "Lt $1000"       "$3000 to 3999" 
#>  [9] "$6000 to 6999"  "$5000 to 5999"  "$8000 to 9999"  "No answer"     
#> [13] "Not applicable" "$20000 - 24999" "Don't know"     "$4000 to 4999"Now if we plotted it, it would show in this order, which is all over the place! How can we fix this and put it in the right order?
We can use the function fct_relevel() when we need to
manually reorder our factor levels. In addition to the factor, you give
it a character vector of level names, and specify where you want to move
them. It defaults to moving them to the front, but you can move them
after another level with the argument after. If you want to
move it to the end, you set after equal to
Inf.
For example, let’s say we wanted to move Lt $1000 and
$1000 to 2999 to the front. We would write:
fct_relevel(reshuffled_income, c("Lt $1000", "$1000 to 2999")) %>%
  levels()
#>  [1] "Lt $1000"       "$1000 to 2999"  "Refused"        "$7000 to 7999" 
#>  [5] "$10000 - 14999" "$25000 or more" "$15000 - 19999" "$3000 to 3999" 
#>  [9] "$6000 to 6999"  "$5000 to 5999"  "$8000 to 9999"  "No answer"     
#> [13] "Not applicable" "$20000 - 24999" "Don't know"     "$4000 to 4999"What if we want to move them to the second and third place?
fct_relevel(reshuffled_income, c("Lt $1000", "$1000 to 2999"), after = 1) %>%
  levels()
#>  [1] "Refused"        "Lt $1000"       "$1000 to 2999"  "$7000 to 7999" 
#>  [5] "$10000 - 14999" "$25000 or more" "$15000 - 19999" "$3000 to 3999" 
#>  [9] "$6000 to 6999"  "$5000 to 5999"  "$8000 to 9999"  "No answer"     
#> [13] "Not applicable" "$20000 - 24999" "Don't know"     "$4000 to 4999"