4

I know this must be super easy, but I'm having trouble finding the right dplyr commands to do this. Let's say I want to group a dataset by two variables, and then summarize the count for each row. For this we simply have:

mtcars %>% group_by(cyl, mpg) %>% summarize(Count = n())

This will generate a dataframe with 27 rows for the three variables cyl, mpg, and Count. What I'd like to do next is summarize the average mpg for each of the three cyl values. Keep in mind that each row may contain a Count greater than one which must be considered when calculating the average. My data frame should have 3 rows of 2 variables cyl, and Avg_mpg. Can someone give me the short code chuck that will do this? Thank you in advance.

2

If I have understood you correctly, you need weighted.mean

library(dplyr)
mtcars %>% 
   group_by(cyl, mpg) %>% 
   summarize(Count = n()) %>%
   group_by(cyl) %>%
   summarise(avg_mpg = weighted.mean(mpg, Count))

# A tibble: 3 x 2
#    cyl   avg_mpg
#  <dbl>   <dbl>
#1  4.00    26.7
#2  6.00    19.7
#3  8.00    15.1

which is equivalent to

mtcars %>% 
  group_by(cyl, mpg) %>% 
  summarize(Count = n()) %>%
  group_by(cyl) %>%
  summarise(avg_mpg = sum(mpg * Count)/sum(Count))
  • 1
    That's exactly what I needed. Thank you. – ds_guy Apr 24 '18 at 1:25
  • @ds_guy If it works, you can check here – akrun Apr 24 '18 at 1:37
  • I think you need to use mutate(Count = n()), not summarize(Count = n()), so as the weighting column Count is added to all rows before calculating the weighted mean. Otherwise the result is exactly the same as the mean grouped by cyl only. – neilfws Apr 24 '18 at 1:57
  • @neilfws I think I agree with you however, the first part of code is provided by OP and I am not sure how are they using it in their real data. So I would leave it to OP to decide how to use it. Thanks though :) – Ronak Shah Apr 24 '18 at 2:09

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