A nest join leaves x
almost unchanged, except that it adds a new
list-column, where each element contains the rows from y
that match the
corresponding row in x
.
Usage
nest_join(x, y, by = NULL, copy = FALSE, keep = NULL, name = NULL, ...)
# S3 method for class 'data.frame'
nest_join(
x,
y,
by = NULL,
copy = FALSE,
keep = NULL,
name = NULL,
...,
na_matches = c("na", "never"),
unmatched = "drop"
)
Arguments
- x, y
A pair of data frames, data frame extensions (e.g. a tibble), or lazy data frames (e.g. from dbplyr or dtplyr). See Methods, below, for more details.
- by
A join specification created with
join_by()
, or a character vector of variables to join by.If
NULL
, the default,*_join()
will perform a natural join, using all variables in common acrossx
andy
. A message lists the variables so that you can check they're correct; suppress the message by supplyingby
explicitly.To join on different variables between
x
andy
, use ajoin_by()
specification. For example,join_by(a == b)
will matchx$a
toy$b
.To join by multiple variables, use a
join_by()
specification with multiple expressions. For example,join_by(a == b, c == d)
will matchx$a
toy$b
andx$c
toy$d
. If the column names are the same betweenx
andy
, you can shorten this by listing only the variable names, likejoin_by(a, c)
.join_by()
can also be used to perform inequality, rolling, and overlap joins. See the documentation at ?join_by for details on these types of joins.For simple equality joins, you can alternatively specify a character vector of variable names to join by. For example,
by = c("a", "b")
joinsx$a
toy$a
andx$b
toy$b
. If variable names differ betweenx
andy
, use a named character vector likeby = c("x_a" = "y_a", "x_b" = "y_b")
.To perform a cross-join, generating all combinations of
x
andy
, seecross_join()
.- copy
If
x
andy
are not from the same data source, andcopy
isTRUE
, theny
will be copied into the same src asx
. This allows you to join tables across srcs, but it is a potentially expensive operation so you must opt into it.- keep
Should the new list-column contain join keys? The default will preserve the join keys for inequality joins.
- name
The name of the list-column created by the join. If
NULL
, the default, the name ofy
is used.- ...
Other parameters passed onto methods.
- na_matches
Should two
NA
or twoNaN
values match?- unmatched
How should unmatched keys that would result in dropped rows be handled?
"drop"
drops unmatched keys from the result."error"
throws an error if unmatched keys are detected.
unmatched
is intended to protect you from accidentally dropping rows during a join. It only checks for unmatched keys in the input that could potentially drop rows.For left joins, it checks
y
.For right joins, it checks
x
.For inner joins, it checks both
x
andy
. In this case,unmatched
is also allowed to be a character vector of length 2 to specify the behavior forx
andy
independently.
Value
The output:
Is same type as
x
(including having the same groups).Has exactly the same number of rows as
x
.Contains all the columns of
x
in the same order with the same values. They are only modified (slightly) ifkeep = FALSE
, when columns listed inby
will be coerced to their common type acrossx
andy
.Gains one new column called
{name}
on the far right, a list column containing data frames the same type asy
.
Relationship to other joins
You can recreate many other joins from the result of a nest join:
inner_join()
is anest_join()
plustidyr::unnest()
.left_join()
is anest_join()
plustidyr::unnest(keep_empty = TRUE)
.semi_join()
is anest_join()
plus afilter()
where you check that every element of data has at least one row.anti_join()
is anest_join()
plus afilter()
where you check that every element has zero rows.
Methods
This function is a generic, which means that packages can provide implementations (methods) for other classes. See the documentation of individual methods for extra arguments and differences in behaviour.
The following methods are currently available in loaded packages:
dplyr (data.frame
)
.
See also
Other joins:
cross_join()
,
filter-joins
,
mutate-joins
Examples
df1 <- tibble(x = 1:3)
df2 <- tibble(x = c(2, 3, 3), y = c("a", "b", "c"))
out <- nest_join(df1, df2)
#> Joining with `by = join_by(x)`
out
#> # A tibble: 3 × 2
#> x df2
#> <dbl> <list>
#> 1 1 <tibble [0 × 1]>
#> 2 2 <tibble [1 × 1]>
#> 3 3 <tibble [2 × 1]>
out$df2
#> [[1]]
#> # A tibble: 0 × 1
#> # ℹ 1 variable: y <chr>
#>
#> [[2]]
#> # A tibble: 1 × 1
#> y
#> <chr>
#> 1 a
#>
#> [[3]]
#> # A tibble: 2 × 1
#> y
#> <chr>
#> 1 b
#> 2 c
#>