# How to use dplyr to calculate a weighted mean of two grouped variables

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.

## 1 Answer

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))
``````
• 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