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I'm trying to wrap some dplyr magic inside a function to produce a data.frame that I then print with xtable.

The ultimate aim is to have a dplyr version of this working, and reading around I came across the very useful summarise_each() function which after subsetting with regroup() (since this is within a function) I can then use to get all columns parsed.

The problem I've encountered (so far) is with calling is.na() from within summarise_each(funs(is.na)) as I'm told Error: expecting a single value.

I'm purposefully not posting my function just yet but a minimal example follows (NB - This uses group_by() whilst in my function I replace this with regroup())...

library(dplyr)
library(magrittr)
> t <- data.frame(grp = rbinom(10, 1, 0.5),
                a = as.factor(round(rnorm(10))),
                b = rnorm(10),
                c = rnorm(10))
t %>%
group_by(grp) %>%  ## This is replaced with regroup() in my function
summarise_each(funs(is.na))
Error: expecting a single value

Running this fails, and its the call to is.na() that is the problem since if I instead work out the number of observations in each (required to derive the proportion of missing) it works...

> t %>%
group_by(grp) %>%  ## This is replaced with regroup() in my function
summarise_each(funs(length))
Source: local data frame [2 x 4]

  grp a b c
1   0 8 8 8
2   1 2 2 2

The real problem though is that I do not need just is.na() within each column, but the sum(is.na()) as per the linked example so what I really would like is...

> t %>%
group_by(grp) %>%  ## This is replaced with regroup() in my function
summarise_each(funs(propmiss = sum(is.na) / length))

But the problem is that sum(is.na) doesn't work as I expect it to (likely because my expectation is wrong!)...

> t %>%
group_by(grp) %>%  ## This is replaced with regroup() in my function
summarise_each(funs(nmiss = sum(is.na)))
Error in sum(.Primitive("is.na")) : invalid 'type' (builtin) of argument

I tried calling is.na() explicitly with the brackets but that too returns an error...

> t %>%
+ group_by(grp) %>%  ## This is replaced with regroup() in my function
+ summarise_each(funs(nmiss      = sum(is.na())))
Error in is.na() : 0 arguments passed to 'is.na' which requires 1

Any advice or pointers to documentation would be very gratefully received.

Thanks,

slackline

  • +1 for an awesome icon – Tyler Rinker Sep 24 '14 at 13:14
8

Here's a possibility, tested on a small data set with some NA:

df <- data.frame(a = rep(1:2, each = 3),
                 b = c(1, 1, NA, 1, NA, NA),
                 c = c(1, 1, 1, NA, NA, NA))

df
#   a  b  c
# 1 1  1  1
# 2 1  1  1
# 3 1 NA  1
# 4 2  1 NA
# 5 2 NA NA
# 6 2 NA NA


df %>% 
  group_by(a) %>%
  summarise_each(funs(sum(is.na(.)) / length(.)))
#   a         b c
# 1 1 0.3333333 0
# 2 2 0.6666667 1

And because you asked for pointers to documentation: The . refers to each piece of the data, and is used in some Examples in ?summarize_each. It is described in the Arguments section of ?funs as a "dummy parameter" , and is used the Examples. The . is also briefly described in the Arguments section of ?do: "... You can use . to refer to the current group"

  • Excellent, thanks for that. I've come across the . before as it was used to denote variables that should be converted to factors in plyr() and I've seen it used in some dplyr() examples. The thing I find confusing (but will bear in mind now) is that many commands work without having to use it to refer to the current group and its not always clear which ones do/don't need it. Anyway, this works great within the function I'm working on, thanks again. – slackline Sep 24 '14 at 15:19

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