问题
I want to left_join
multiple data frames:
dfs <- list(
df1 = data.frame(a = 1:3, b = c("a", "b", "c")),
df2 = data.frame(c = 4:6, b = c("a", "c", "d")),
df3 = data.frame(d = 7:9, b = c("b", "c", "e"))
)
Reduce(left_join, dfs)
# a b c d
# 1 1 a 4 NA
# 2 2 b NA 7
# 3 3 c 5 8
This works because they all have the same b
column, but Reduce
doesn't let me specify additional arguments that I can pass to left_join
. Is there a work around for something like this?
dfs <- list(
df1 = data.frame(a = 1:3, b = c("a", "b", "c")),
df2 = data.frame(c = 4:6, d = c("a", "c", "d")),
df3 = data.frame(d = 7:9, b = c("b", "c", "e"))
)
Update
This kind of works: Reduce(function(...) left_join(..., by = c("b" = "d")), dfs)
but when by
is more than one element it gives this error: Error: cannot join on columns 'b' x 'd': index out of bounds
回答1:
It's been too late i know....today I got introduced to the unanswered questions section. Sorry to bother.
Using left_join()
dfs <- list(
df1 = data.frame(b = c("a", "b", "c"), a = 1:3),
df2 = data.frame(d = c("a", "c", "d"), c = 4:6),
df3 = data.frame(b = c("b", "c", "e"), d = 7:9)
)
func <- function(...){
df1 = list(...)[[1]]
df2 = list(...)[[2]]
col1 = colnames(df1)[1]
col2 = colnames(df2)[1]
xxx = left_join(..., by = setNames(col2,col1))
return(xxx)
}
Reduce( func, dfs)
# b a c d
#1 a 1 4 NA
#2 b 2 NA 7
#3 c 3 5 8
Using merge()
:
func <- function(...){
df1 = list(...)[[1]]
df2 = list(...)[[2]]
col1 = colnames(df1)[1]
col2 = colnames(df2)[1]
xxx=merge(..., by.x = col1, by.y = col2, , all.x = T)
return(xxx)
}
Reduce( func, dfs)
# b a c d
#1 a 1 4 NA
#2 b 2 NA 7
#3 c 3 5 8
回答2:
Would this work for you?
jnd.tbl <- df1 %>%
left_join(df2, by='b') %>%
left_join(df3, by='d')
来源:https://stackoverflow.com/questions/34344214/how-to-join-multiple-data-frames-using-dplyr