2

Below, I have a simplified version of my data frame, which actually has more rows and columns.

df <- data.frame(category=c("con","con","con","con","con","con",
"tre","tre","tre","tre","tre","tre"),
answer=c(1,0,1,0,0,0,1,0,0,1,1,1),
female=c(1,1,0,0,0,0,1,1,1,0,0,0),
married=c(1,1,1,0,0,0,0,1,1,0,0,0))

I need to crete a new data frame in R, which

  • is grouped by the variable "category", and
  • shows the percentages of the dependent variable "answer" under each independent variable.

And, below is the data frame that I try to create.

needed <- data.frame(category=c("con", "tre"), 
female=c(50, 33.33),     
married=c(66.66, 0))

For example, it shows that

  • 33.33 percent of the females in the treatment group answered the question.
  • 66.66 percent of the married people in the cotrol group answered the question.
  • etc.

Many thanks for your help.

5

Here's a possible dplyr implementation which will operate over all you columns at once

library(dplyr)
df %>%
  group_by(category) %>%
  summarise_each(funs(sum(.[answer == 1])/sum(.)), -answer)

# Source: local data frame [2 x 3]
# 
#   category    female   married
#     (fctr)     (dbl)     (dbl)
# 1      con 0.5000000 0.6666667
# 2      tre 0.3333333 0.0000000

You can do a similar thing with data.table but you will get an additional answer column too as a result

library(data.table)
setDT(df)[, lapply(.SD, function(x) sum(x[answer == 1])/sum(x)), by = category]
#    category answer    female   married
# 1:      con      1 0.5000000 0.6666667
# 2:      tre      1 0.3333333 0.0000000

Issue #495 is solved now with this recent commit, we can now do this just fine:

require(data.table) # v1.9.7+
setDT(df)[, lapply(.SD, function(x) sum(x[answer==1])/sum(x)), by=category, .SDcols=-"answer"]
#    category    female   married
# 1:      con 0.5000000 0.6666667
# 2:      tre 0.3333333 0.0000000
2

Adding the necessary base-R idea:

rowsum((df$answer & df[c("female", "married")]) + 0L, df$category) /
rowsum(df[c("female", "married")], df$category)
#       female   married
#con 0.5000000 0.6666667
#tre 0.3333333 0.0000000
1

Another option is split with colSums. We split the dataset by 'category' to get a list output. We can loop using sapply and get the colSums for the subset of columns and the corresponding rows where answer is 1, divide by the colSums of the 'con', 'tre' output.

 t(sapply(split(df, df$category), function(x)
           100*with(x, colSums(x[answer==1,3:4])/colSums(x[3:4]))))
 #      female  married
 #con 50.00000 66.66667
 #tre 33.33333  0.00000

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