knitr::opts_chunk$set(collapse = T, comment = "#>") options(tibble.print_min = 5) library(dplyr)
It's rare that a data analysis involves only a single table of data. In practice, you'll normally have many tables that contribute to an analysis, and you need flexible tools to combine them. In dplyr, there are three families of verbs that work with two tables at a time:
Mutating joins, which add new variables to one table from matching rows in another.
Filtering joins, which filter observations from one table based on whether or not they match an observation in the other table.
Set operations, which combine the observations in the data sets as if they were set elements.
(This discussion assumes that you have tidy data, where the rows are observations and the columns are variables. If you're not familiar with that framework, I'd recommend reading up on it first.)
All two-table verbs work similarly. The first two arguments are x
and y
, and provide the tables to combine. The output is always a new table with the same type as x
.
Mutating joins allow you to combine variables from multiple tables. For example, consider the flights and airlines data from the nycflights13 package. In one table we have flight information with an abbreviation for carrier, and in another we have a mapping between abbreviations and full names. You can use a join to add the carrier names to the flight data:
library(nycflights13) # Drop unimportant variables so it's easier to understand the join results. flights2 <- flights %>% select(year:day, hour, origin, dest, tailnum, carrier) flights2 %>% left_join(airlines)
As well as x
and y
, each mutating join takes an argument by
that controls which variables are used to match observations in the two tables. There are a few ways to specify it, as I illustrate below with various tables from nycflights13:
NULL
, the default. dplyr will will use all variables that appear in
both tables, a natural join. For example, the flights and
weather tables match on their common variables: year, month, day, hour and
origin.
r
flights2 %>% left_join(weather)
A character vector, by = "x"
. Like a natural join, but uses only
some of the common variables. For example, flights
and planes
have
year
columns, but they mean different things so we only want to join by
tailnum
.
r
flights2 %>% left_join(planes, by = "tailnum")
Note that the year columns in the output are disambiguated with a suffix.
A named character vector: by = c("x" = "a")
. This will
match variable x
in table x
to variable a
in table y
. The
variables from use will be used in the output.
Each flight has an origin and destination airport
, so we need to specify
which one we want to join to:
r
flights2 %>% left_join(airports, c("dest" = "faa"))
flights2 %>% left_join(airports, c("origin" = "faa"))
There are four types of mutating join, which differ in their behaviour when a match is not found. We'll illustrate each with a simple example:
df1 <- tibble(x = c(1, 2), y = 2:1) df2 <- tibble(x = c(3, 1), a = 10, b = "a")
inner_join(x, y)
only includes observations that match in both x
and y
.
r
df1 %>% inner_join(df2) %>% knitr::kable()
left_join(x, y)
includes all observations in x
, regardless of whether
they match or not. This is the most commonly used join because it ensures
that you don't lose observations from your primary table.
r
df1 %>% left_join(df2)
right_join(x, y)
includes all observations in y
. It's equivalent to
left_join(y, x)
, but the columns and rows will be ordered differently.
r
df1 %>% right_join(df2)
df2 %>% left_join(df1)
full_join()
includes all observations from x
and y
.
r
df1 %>% full_join(df2)
The left, right and full joins are collectively know as outer joins. When a row doesn't match in an outer join, the new variables are filled in with missing values.
While mutating joins are primarily used to add new variables, they can also generate new observations. If a match is not unique, a join will add all possible combinations (the Cartesian product) of the matching observations:
df1 <- tibble(x = c(1, 1, 2), y = 1:3) df2 <- tibble(x = c(1, 1, 2), z = c("a", "b", "a")) df1 %>% left_join(df2)
Filtering joins match observations in the same way as mutating joins, but affect the observations, not the variables. There are two types:
semi_join(x, y)
keeps all observations in x
that have a match in y
.anti_join(x, y)
drops all observations in x
that have a match in y
.These are most useful for diagnosing join mismatches. For example, there are many flights in the nycflights13 dataset that don't have a matching tail number in the planes table:
library("nycflights13") flights %>% anti_join(planes, by = "tailnum") %>% count(tailnum, sort = TRUE)
If you're worried about what observations your joins will match, start with a semi_join()
or anti_join()
. semi_join()
and anti_join()
never duplicate; they only ever remove observations.
df1 <- tibble(x = c(1, 1, 3, 4), y = 1:4) df2 <- tibble(x = c(1, 1, 2), z = c("a", "b", "a")) # Four rows to start with: df1 %>% nrow() # And we get four rows after the join df1 %>% inner_join(df2, by = "x") %>% nrow() # But only two rows actually match df1 %>% semi_join(df2, by = "x") %>% nrow()
The final type of two-table verb is set operations. These expect the x
and y
inputs to have the same variables, and treat the observations like sets:
intersect(x, y)
: return only observations in both x
and y
union(x, y)
: return unique observations in x
and y
setdiff(x, y)
: return observations in x
, but not in y
.Given this simple data:
(df1 <- tibble(x = 1:2, y = c(1L, 1L))) (df2 <- tibble(x = 1:2, y = 1:2))
The four possibilities are:
intersect(df1, df2) # Note that we get 3 rows, not 4 union(df1, df2) setdiff(df1, df2) setdiff(df2, df1)
dplyr does not provide any functions for working with three or more tables. Instead use purrr::reduce()
or Reduce()
, as described in Advanced R, to iteratively combine the two-table verbs to handle as many tables as you need.
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