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I want to use use the dplyr::group_by function inside another function, but I do not know how to pass the arguments to this function. Would you so kind as to provide a working example? Thanks you

library(dplyr)
data(iris)
iris %.% group_by(Species) %.% summarise(n = n()) # 
## Source: local data frame [3 x 2]
##      Species  n
## 1  virginica 50
## 2 versicolor 50
## 3     setosa 50

mytable0 <- function(x, ...) x %.% group_by(...) %.% summarise(n = n())
mytable0(iris, "Species") # OK
## Source: local data frame [3 x 2]
##      Species  n
## 1  virginica 50
## 2 versicolor 50
## 3     setosa 50

mytable1 <- function(x, key) x %.% group_by(as.name(key)) %.% summarise(n = n())
mytable1(iris, "Species") # Wrong!
# Error: unsupported type for column 'as.name(key)' (SYMSXP)

mytable2 <- function(x, key) x %.% group_by(key) %.% summarise(n = n())
mytable2(iris, "Species") # Wrong!
# Error: index out of bounds
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Copying this exactly, iris %.% group_by(Species) %.% summarise(n = n()) causes Error in n() : This function should not be called directly. WTF?! dplyr 0.1.2, R 3.0.3 –  smci Apr 7 at 3:27
1  
^ This is the known gotcha caused by wrongly loading dplyr first, then plyr, causing essential fns like mutate, summarize, arrange, desc, ... to be masked. See stackoverflow.com/questions/22801153/… –  smci Apr 7 at 4:36

2 Answers 2

up vote 20 down vote accepted

For programming, regroup is the counterpart to group_by:

library(dplyr)

mytable <- function(x, ...) x %>% regroup(list(...)) %>% summarise(n = n())
mytable(iris, "Species")

which gives:

     Species  n
1     setosa 50
2 versicolor 50
3  virginica 50

Update At the time this was written dplyr used %.% which is what was originally used above but now %>% is favored so have changed above to that to keep this relevant.

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+1, good to know. –  BrodieG Feb 16 at 22:26
1  
There is no need for the as.name etc. mytable <- function(x, ...) x %.% regroup(value = list(...)) %.% summarise(n = n()); mytable(x,'key1','key2') , or mytable <- function(x, key) x %.% regroup(value = as.list(key) %.% summarise(n = n()); mytable(x, list('key1','key2'))` to allow grouping by more than one column –  mnel Feb 17 at 2:17
    
Thanks. Have replaced as.name(key) with ... . –  G. Grothendieck Feb 17 at 4:30
2  
Now it's even simpler in dplyr 0.3 with lazyeval: mytable <- function(x, ...) x %>% group_by_(...) %>% summarise(n = n()) –  Roberto Nov 12 at 1:53

Ugly as they come, but she works:

mytable3 <- function(x, key) {
  my.call <- bquote(summarise(group_by(.(substitute(x)), NULL), n = n()))
  my.call[[2]][[3]] <- as.name(key)
  eval(my.call, parent.frame())
} 
mytable3(iris, "Species")
# Source: local data frame [3 x 2]
#
#      Species  n
# 1  virginica 50
# 2 versicolor 50
# 3     setosa 50

There are almost certainly cases that will cause this to break, but you get the idea. I don't think you can get around messing with the call. One other thing that did work but was even uglier is:

mytable4 <- function(x, key) summarise(group_by(x, x[[key]]), n = n())
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