16

Using dplyr to summarise a dataset, I want to call n_distinct to count the number of unique occurrences in a column. However, I also want to do another summarise() for all unique occurrences in a column where a condition in another column is satisfied.

Example dataframe named "a":

A B
1 Y
2 N
3 Y
1 Y

a %>% summarise(count = n_distinct(A))

However I also want to add a count of n_distinct(A) where B == "Y"

The result should be:

count
    3

when you add the condition the result should be:

count
    2

The end result I am trying to achieve is both statements merged into one call that gives me a result like

count_all  count_BisY
        3           2

What is the appropriate way to go about this with dplyr?

6
  • 3
    Can you try using: a %>% summaries(count = n_distinct(A[B == 'Y']))?
    – Gopala
    Jan 6, 2016 at 15:54
  • @user3949008 Error: Input to n_distinct() must be a single variable name from the data set Jan 6, 2016 at 15:58
  • 1
    Sorry, this works n_distinct(df$A[df$B == 'Y']).
    – Gopala
    Jan 6, 2016 at 16:11
  • 1
    I still get the same error :S! a %>% summarise(count = n_distinct(a$A[a$B == 'Y'])) Jan 6, 2016 at 16:24
  • 1
    It seems to me that what @Gopala proposes is the correct answer. In particular data.frame(A = c(1:3,1), B = c('Y', 'N', 'Y', 'Y')) %>% summarise(count = n_distinct(A[B == 'Y']), count_all = n_distinct(A)) works for me (with dplyr 0.7.6).
    – banbh
    Nov 9, 2018 at 14:29

4 Answers 4

16

This produces the distinct A counts by each value of B using dplyr.

library(dplyr)
a %>%
  group_by(B) %>%
  summarise(count = n_distinct(A))

This produces the result:

Source: local data frame [2 x 2]

       B count
  (fctr) (int)
1      N     1
2      Y     2

To produce the desired output added above using dplyr, you can do the following:

a %>% summarise(count_all = n_distinct(A), count_BisY = length(unique(A[B == 'Y'])))

This produces the result:

  count_all count_BisY
1         3          2
0
12

An alternative is to use the uniqueN function from data.table inside dplyr:

library(dplyr)
library(data.table)
a %>% summarise(count_all = n_distinct(A), count_BisY = uniqueN(A[B == 'Y']))

which gives:

  count_all count_BisY
1         3          2

You can also do everything with data.table:

library(data.table)
setDT(a)[, .(count_all = uniqueN(A), count_BisY = uniqueN(A[B == 'Y']))]

which gives the same result.

3

Filtering the dataframe before performing the summarise works

a %>%
  filter(B=="Y") %>%
  summarise(count = n_distinct(A))
3
  • I understand that, apologies for being unclear, my end goal is to have a result where it shows the count of total, and the count where B=="Y" in one table. I could do each separately and cbind them together I suppose Jan 6, 2016 at 16:07
  • Can you replace filter() with group_by(B)? Does that get you what you want?
    – Gopala
    Jan 6, 2016 at 16:23
  • Yeah actually I think that works, it just adds an extra column and extra rows where I can really have it consolidated to have a column representing the number of B == 'Y'. I realize this isn't tidy data but it is what I am trying to achieve Jan 6, 2016 at 16:31
1

We can also use aggregate from base R

 aggregate(cbind(count=A)~B, a, FUN=function(x) length(unique(x)))
 #  B count
 #1 N 1
 #2 Y 2

Based on the OP's expected output

 data.frame(count=length(unique(a$A)), 
            count_BisY = length(unique(a$A[a$B=="Y"])))
2
  • Yeah for sure, aggregate is pretty intuitive for me but I have been trying to learn the dplyr language because it benchmarks faster speeds and accepts more than just dataframes Jan 6, 2016 at 18:33
  • @RyanCastner Thanks for the feedback. But, in some situations I find it useful to have base R solutions. For example, recently, I had to implement a group by operation in Alteryx, but the version available have some problems in using dplyr. So, have to resort to base R.
    – akrun
    Jan 6, 2016 at 18:36

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