| join {dplyr} | R Documentation |
These are generic functions that dispatch to individual tbl methods - see the
method documentation for details of individual data sources. x and
y should usually be from the same data source, but if copy is
TRUE, y will automatically be copied to the same source as x.
inner_join(x, y, by = NULL, copy = FALSE, suffix = c(".x", ".y"), ...)
left_join(x, y, by = NULL, copy = FALSE, suffix = c(".x", ".y"), ...)
right_join(x, y, by = NULL, copy = FALSE, suffix = c(".x", ".y"), ...)
full_join(x, y, by = NULL, copy = FALSE, suffix = c(".x", ".y"), ...)
semi_join(x, y, by = NULL, copy = FALSE, ...)
anti_join(x, y, by = NULL, copy = FALSE, ...)
x, y |
tbls to join |
by |
a character vector of variables to join by. If To join by different variables on x and y use a named vector.
For example, |
copy |
If |
suffix |
If there are non-joined duplicate variables in |
... |
other parameters passed onto methods, for instance, |
Currently dplyr supports four types of mutating joins and two types of filtering joins.
Mutating joins combine variables from the two data.frames:
inner_join()return all rows from x where there are matching
values in y, and all columns from x and y. If there are multiple matches
between x and y, all combination of the matches are returned.
left_join()return all rows from x, and all columns from x
and y. Rows in x with no match in y will have NA values in the new
columns. If there are multiple matches between x and y, all combinations
of the matches are returned.
right_join()return all rows from y, and all columns from x
and y. Rows in y with no match in x will have NA values in the new
columns. If there are multiple matches between x and y, all combinations
of the matches are returned.
full_join()return all rows and all columns from both x and y.
Where there are not matching values, returns NA for the one missing.
Filtering joins keep cases from the left-hand data.frame:
semi_join()return all rows from x where there are matching
values in y, keeping just columns from x.
A semi join differs from an inner join because an inner join will return
one row of x for each matching row of y, where a semi
join will never duplicate rows of x.
anti_join()return all rows from x where there are not
matching values in y, keeping just columns from x.
Groups are ignored for the purpose of joining, but the result preserves
the grouping of x.
# "Mutating" joins combine variables from the LHS and RHS
band_members %>% inner_join(band_instruments)
band_members %>% left_join(band_instruments)
band_members %>% right_join(band_instruments)
band_members %>% full_join(band_instruments)
# "Filtering" joins keep cases from the LHS
band_members %>% semi_join(band_instruments)
band_members %>% anti_join(band_instruments)
# To suppress the message, supply by
band_members %>% inner_join(band_instruments, by = "name")
# This is good practice in production code
# Use a named `by` if the join variables have different names
band_members %>% full_join(band_instruments2, by = c("name" = "artist"))
# Note that only the key from the LHS is kept