I'm trying to transfer my understanding of plyr into dplyr, but I can't figure out how to group by multiple columns.

# make data with weird column names that can't be hard coded
data = data.frame(
  asihckhdoydkhxiydfgfTgdsx = sample(LETTERS[1:3], 100, replace=TRUE),
  a30mvxigxkghc5cdsvxvyv0ja = sample(LETTERS[1:3], 100, replace=TRUE),
  value = rnorm(100)

# get the columns we want to average within
columns = names(data)[-3]

# plyr - works
ddply(data, columns, summarize, value=mean(value))

# dplyr - raises error
data %.%
  group_by(columns) %.%
  summarise(Value = mean(value))
#> Error in eval(expr, envir, enclos) : index out of bounds

What am I missing to translate the plyr example into a dplyr-esque syntax?

Edit 2017: Dplyr has been updated, so a simpler solution is available. See the currently selected answer.

  • 3
    Just got here as it was top google. You can use group_by_ now explained in vignette("nse") – James Owers Jan 26 '15 at 14:22
  • 3
    @kungfujam: That appears to only group by the first column, not the pair of columns – sharoz Jan 27 '15 at 18:27
  • 1
    You need to use .dots. Here's the solution adapted from @hadley 's answer below: df %>% group_by_(.dots=list(quote(asihckhdoydk), quote(a30mvxigxkgh))) %>% summarise(n = n()) – James Owers Jan 27 '15 at 22:06
  • 1
    Have put full code in an answer below – James Owers Jan 28 '15 at 0:00
  • 1
    As someone pointed out in an answer on the comment, the aim is to not require hardcoded column names. – sharoz Jan 28 '15 at 3:12

Since this question was posted, dplyr added scoped versions of group_by (documentation here). This lets you use the same functions you would use with select, like so:

data = data.frame(
    asihckhdoydkhxiydfgfTgdsx = sample(LETTERS[1:3], 100, replace=TRUE),
    a30mvxigxkghc5cdsvxvyv0ja = sample(LETTERS[1:3], 100, replace=TRUE),
    value = rnorm(100)

# get the columns we want to average within
columns = names(data)[-3]

df1 <- data %>%
  group_by_at(vars(one_of(columns))) %>%
  summarize(Value = mean(value))

#compare plyr for reference
df2 <- plyr::ddply(data, columns, plyr::summarize, value=mean(value))
table(df1 == df2, useNA = 'ifany')
## TRUE 
##  27 

The output from your example question is as expected (see comparison to plyr above and output below):

# A tibble: 9 x 3
# Groups:   asihckhdoydkhxiydfgfTgdsx [?]
  asihckhdoydkhxiydfgfTgdsx a30mvxigxkghc5cdsvxvyv0ja       Value
                     <fctr>                    <fctr>       <dbl>
1                         A                         A  0.04095002
2                         A                         B  0.24943935
3                         A                         C -0.25783892
4                         B                         A  0.15161805
5                         B                         B  0.27189974
6                         B                         C  0.20858897
7                         C                         A  0.19502221
8                         C                         B  0.56837548
9                         C                         C -0.22682998

Note that since dplyr::summarize only strips off one layer of grouping at a time, you've still got some grouping going on in the resultant tibble (which can sometime catch people by suprise later down the line). If you want to be absolutely safe from unexpected grouping behavior, you can always add %>% ungroup to your pipeline after you summarize.

  • does update to 0.7.0 make the quote-unquote system available with several columns, too? – JelenaČuklina Mar 19 '18 at 10:23
  • 2
    @Empironmancer: Does this answer still work? – Khashir Aug 13 '18 at 18:43
  • 2
    You can also use the .dots arguments to group_by() as such: data %>% group_by(.dots = columns) %>% summarize(value = mean(value)). – Paul Rougieux Oct 19 '18 at 8:28

Just so as to write the code in full, here's an update on Hadley's answer with the new syntax:


df <-  data.frame(
    asihckhdoydk = sample(LETTERS[1:3], 100, replace=TRUE),
    a30mvxigxkgh = sample(LETTERS[1:3], 100, replace=TRUE),
    value = rnorm(100)

# Columns you want to group by
grp_cols <- names(df)[-3]

# Convert character vector to list of symbols
dots <- lapply(grp_cols, as.symbol)

# Perform frequency counts
df %>%
    group_by_(.dots=dots) %>%
    summarise(n = n())


Source: local data frame [9 x 3]
Groups: asihckhdoydk

  asihckhdoydk a30mvxigxkgh  n
1            A            A 10
2            A            B 10
3            A            C 13
4            B            A 14
5            B            B 10
6            B            C 12
7            C            A  9
8            C            B 12
9            C            C 10
  • 1
    This seems to still be hardcoding the column names, just in a formula instead. The point of the question is how to use strings so as to not have to type asihckhdoydk... – Gregor Jan 28 '15 at 0:18
  • 1
    Have updated solution using dots <- lapply(names(df)[-3], function(x) as.symbol(x)) to create the .dots argument – James Owers Jan 28 '15 at 10:55
  • 3
    trying to sort through these answers, .dots= was the crucial step. if someone has a good handle on why that's required in the group_by call, can you edit this answer? right now it's a bit inscrutable. – Andrew Jul 8 '15 at 19:33
  • 12
    vignette("nse") indicates there are three ways to quote that are acceptable: formula, quote, and character. Unless you are worried about which environment it will pull from, you can probably get away with group_by_(.dots=grp_cols) – Ari B. Friedman Jul 22 '15 at 1:32

The support for this in dplyr is currently pretty weak, eventually I think the syntax will be something like:

df %.% group_by(.groups = c("asdfgfTgdsx", "asdfk30v0ja"))

But that probably won't be there for a while (because I need to think through all the consequences).

In the meantime, you can use regroup(), which takes a list of symbols:


df <-  data.frame(
  asihckhdoydk = sample(LETTERS[1:3], 100, replace=TRUE),
  a30mvxigxkgh = sample(LETTERS[1:3], 100, replace=TRUE),
  value = rnorm(100)

df %.%
  regroup(list(quote(asihckhdoydk), quote(a30mvxigxkgh))) %.%
  summarise(n = n())

If you have have a character vector of column names, you can convert them to the right structure with lapply() and as.symbol():

vars <- setdiff(names(df), "value")
vars2 <- lapply(vars, as.symbol)

df %.% regroup(vars2) %.% summarise(n = n())
  • 6
    as.symbol solves it. Thanks! In case it helps with development: this scenario is a really common one for me. Aggregate a numerical result over every combination of the other variables. – sharoz Jan 21 '14 at 20:17
  • apparently this only works for this particular example and no other. – Paulo E. Cardoso Apr 28 '14 at 16:58
  • 3
    I originally marked this as the answer, but updates to dplyr allow kungfujam's answer to work. – sharoz Jan 28 '15 at 14:44
  • regroup is also deprecated (at least as of version 0.4.3). – Berk U. Jun 8 '16 at 1:11

String specification of columns in dplyr are now supported through variants of the dplyr functions with names finishing in an underscore. For example, corresponding to the group_by function there is a group_by_ function that may take string arguments. This vignette describes the syntax of these functions in detail.

The following snippet cleanly solves the problem that @sharoz originally posed (note the need to write out the .dots argument):

# Given data and columns from the OP

data %>%
    group_by_(.dots = columns) %>%
    summarise(Value = mean(value))

(Note that dplyr now uses the %>% operator, and %.% is deprecated).


Until dplyr has full support for string arguments, perhaps this gist is useful:


It contains bunch of wrapper functions like s_group_by, s_mutate, s_filter, etc that use string arguments. You can mix them with the normal dplyr functions. For example

cols = c("cyl","gear")
mtcars %.%
  s_group_by(cols) %.%  
  s_summarise("avdisp=mean(disp), max(disp)") %.%

It works if you pass it the objects (well, you aren't, but...) rather than as a character vector:

df %.%
    group_by(asdfgfTgdsx, asdfk30v0ja) %.%
    summarise(Value = mean(value))

> df %.%
+   group_by(asdfgfTgdsx, asdfk30v0ja) %.%
+   summarise(Value = mean(value))
Source: local data frame [9 x 3]
Groups: asdfgfTgdsx

  asdfgfTgdsx asdfk30v0ja        Value
1           A           C  0.046538002
2           C           B -0.286359899
3           B           A -0.305159419
4           C           A -0.004741504
5           B           B  0.520126476
6           C           C  0.086805492
7           B           C -0.052613078
8           A           A  0.368410146
9           A           B  0.088462212

where df was your data.

?group_by says:

 ...: variables to group by. All tbls accept variable names, some
      will also accept functons of variables. Duplicated groups
      will be silently dropped.

which I interpret to mean not the character versions of the names, but how you would refer to them in foo$bar; bar is not quoted here. Or how you'd refer to variables in a formula: foo ~ bar.

@Arun also mentions that you can do:

df %.%
    group_by("asdfgfTgdsx", "asdfk30v0ja") %.%
    summarise(Value = mean(value))

But you can't pass in something that unevaluated is not a name of a variable in the data object.

I presume this is due to the internal methods Hadley is using to look up the things you pass in via the ... argument.

  • 1
    @Arun Thanks for that. I hadn't noticed that, but it too makes sense. I added a note to this regard, citing you and your comment. – Gavin Simpson Jan 18 '14 at 20:01
  • 4
    Unfortunately, I can't rely on hard coding the column names. I'm trying to do this without having to specify them. – sharoz Jan 18 '14 at 22:10
data = data.frame(
  my.a = sample(LETTERS[1:3], 100, replace=TRUE),
  my.b = sample(LETTERS[1:3], 100, replace=TRUE),
  value = rnorm(100)

group_by(data,newcol=paste(my.a,my.b,sep="_")) %>% summarise(Value=mean(value))

One (tiny) case that is missing from the answers here, that I wanted to make explicit, is when the variables to group by are generated dynamically midstream in a pipeline:

df_foo = r_series(rnorm, 10, 1000)
df_foo %>% 
  # 1. create quantized versions of base variables
    funs(Quantized = . > 0)
  ) %>% 
  # 2. group_by the indicator variables
    .dots = grep("Quantized", names(.), value = TRUE)
    ) %>% 
  # 3. summarize the base variables
    funs(sum(., na.rm = TRUE)), contains("X_")

This basically shows how to use grep in conjunction with group_by_(.dots = ...) to achieve this.


General example on using the .dots argument as character vector input to the dplyr::group_by function :

iris %>% 
    group_by(.dots ="Species") %>% 
    summarise(meanpetallength = mean(Petal.Length))

Or without a hard coded name for the grouping variable (as asked by the OP):

iris %>% 
    group_by(.dots = names(iris)[5]) %>% 
    summarise_at("Petal.Length", mean)

With the example of the OP:

data %>% 
    group_by(.dots =names(data)[-3]) %>% 
    summarise_at("value", mean)

See also the dplyr vignette on programming which explains pronouns, quasiquotation, quosures, and tidyeval.

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