# Calculate Group Mean and Overall Mean

I have a data frame with several variables I want to get the means of and a variable I want to group by. Then, I would like to get the proportion of each group's mean to the overall mean.

I have put together the following, but it is clumsy.

How would you go about it using `dplyr` or `data.table`? Bonus points for the option to return both the intermediate step (group and overall mean) and the final proportions.

``````library(tidyverse)

set.seed(1)
Data <- data.frame(
X1 = sample(1:10),
X2 = sample(11:20),
X3 = sample(21:30),
Y = sample(c("yes", "no"), 10, replace = TRUE)
)

groupMeans <- Data %>%
group_by(Y) %>%
summarize_all(funs(mean))

overallMeans <- Data %>%
select(-Y) %>%
summarize_all(funs(mean))

index <- sweep(as.matrix(groupMeans[, -1]), MARGIN = 2,  as.matrix(overallMeans), FUN = "/")
``````
• The library `dplyr` is a part of `tidyverse` package, so you have is all ready using dplyr. – Dave2e Aug 10 '18 at 20:37

here is one more dplyr solution

``````index <- as.data.frame(Data %>%
group_by(Y) %>%
summarise_all(mean) %>%
select(-Y)  %>%
rbind(Data %>% select(-Y) %>% summarise_all(mean))%>%
mutate_all(funs( . / .[3])))[1:2,]
``````
• Thank you. That works great. Just to understand the `mutate_all` bit. It divides every element by the third element? What can I use to replace this [3] with a dynamic number based on the number of columns of data? – DGenchev Aug 12 '18 at 10:19
• Yes, you can use not figure, which indicates number of column but variable to which you can assign different values. – Nar Aug 12 '18 at 16:18

Here is one possible `dplyr` solution that contains everything you want:

``````Data %>%
group_by(Y) %>%
summarise(
group_avg_X1 = mean(X1),
group_avg_X2 = mean(X2),
group_avg_X3 = mean(X3)
) %>%
mutate(
overall_avg_X1 = mean(group_avg_X1),
overall_avg_X2 = mean(group_avg_X2),
overall_avg_X3 = mean(group_avg_X3),
proportion_X1 = group_avg_X1 / overall_avg_X1,
proportion_X2 = group_avg_X2 / overall_avg_X2,
proportion_X3 = group_avg_X3 / overall_avg_X3
)

# # A tibble: 2 x 10
#   Y     group_avg_X1 group_avg_X2 group_avg_X3 overall_avg_X1 overall_avg_X2 overall_avg_X3 proportion_X1
#   <fct>        <dbl>        <dbl>        <dbl>          <dbl>          <dbl>          <dbl>         <dbl>
# 1 no             6.6         14.6         25.8            5.5           15.5           25.5           1.2
# 2 yes            4.4         16.4         25.2            5.5           15.5           25.5           0.8
# # ... with 2 more variables: proportion_X2 <dbl>, proportion_X3 <dbl>
``````

Here's a method with `data.table`:

``````#data
library(data.table)
set.seed(1)
dt <- data.table(
x1 = sample(1:10),
x2 = sample(11:20),
x3 = sample(21:30),
y = sample(c("yes", "no"), 10, replace = TRUE)
)

# group means
group_means <- dt[ , lapply(.SD, mean), by=y, .SDcols=1:3]

# overall means
overall_means <- dt[ , lapply(.SD, mean), .SDcols=1:3]

# clunky combination (sorry!)
group_means[ , perc_x1 := x1 / overall_means[[1]] ]
group_means[ , perc_x2 := x2 / overall_means[[2]] ]
group_means[ , perc_x3 := x3 / overall_means[[3]] ]
``````