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 at 20:37
up vote 2 down vote accepted

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 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 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]] ]

Your Answer

 

By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

Not the answer you're looking for? Browse other questions tagged or ask your own question.