# How to make a frequency table by class [duplicate]

This is the code I have set up so far :

``````library(dslabs)
library(dplyr)
library(lubridate)

data("reported_heights")

dat <- mutate(reported_heights, date_time = ymd_hms(time_stamp)) %>%
filter(date_time >= make_date(2016, 01, 25) & date_time < make_date(2016, 02, 1)) %>%
mutate(type = ifelse(day(date_time) == 25 & hour(date_time) == 8 & between(minute(date_time), 15, 30), "inclass","online")) %>%
select(sex, type, time_stamp)

y <- factor(dat\$sex, c("Female", "Male"))
x <- dat\$type

counter <- count(dat, sex,type)
``````

It creates for me a tbl_df that looks like this, link below :

``````      sex | type    | n
1  Female | inclass | 26
2  Male   | inclass | 13
3  Female | online  | 42
4  Male   | online  | 69
``````

I am asking if you can help me with a code that will calculate the proportion of each sex in each type of class.

I have been trying to create a new table using the x characters "inclass" and "online" as columns with a proportion column added and then the y factors "male" and "female" would be the rows. I have been trying to do this using `pull()` and `prop.table()` but I am a total newbie and it would mean the world to me if you beautiful experts can help me. I have been going through answers for hours now and maybe the answer is already out there so please excuse that I can't seem to find it.... Thank you so much.

What is the proportion of the sexes(male&female) in each type of class(inclass&online)?

It's possible to calculate this by dividing the sex with the total number of students in a given type of class.

For example: There are 42 females studying online out of the total (42+69)=111. Answer: In the online class 38% are females.

How can we do this in R ?

Using `prop.table()`:

``````prop.table(table(y, x), 2)
#        x
#y          inclass    online
#  Female 0.6666667 0.3783784
#  Male   0.3333333 0.6216216
``````
• That's a sweet way of doing exactly what I was going for with only one line. Awesome @Cole Thanks :D – Lydía Rósa Jóakimsdóttir Oct 2 '19 at 16:44

You may use `table()`,

``````my.table <- with(dat, table(sex, type))
my.table
#         type
# sex      inclass online
#   Female      26     42
#   Male        13     69
``````

and `apply()` a function on the result.

``````res <- apply(my.table, 2, function(x) x/sum(x)*100)
res
#         type
# sex       inclass   online
#   Female 66.66667 37.83784
#   Male   33.33333 62.16216
``````

To get a nicer output you could `round()` then and add `%`.

``````res2 <- as.data.frame(unclass(round(res, 1)))
res2[] <- lapply(res2, paste0, "%")
res2
#        inclass online
# Female   66.7%  37.8%
# Male     33.3%  62.2%
``````

To get the proportion in each class, we can use `ave` in base R

``````df\$prop <- with(df, n/ave(n, type, FUN = sum)) * 100
df
#     sex    type  n     prop
#1 Female inclass 26 66.66667
#2   Male inclass 13 33.33333
#3 Female  online 42 37.83784
#4   Male  online 69 62.16216
``````

The same can be achieved with `dplyr`

``````library(dplyr)
df %>% group_by(type) %>% mutate(prop = n/sum(n) * 100)
``````

and `data.table`

``````library(data.table)
setDT(df)[, prop := n/sum(n) * 100, by = type]
``````

data

``````df <- structure(list(sex = structure(c(1L, 2L, 1L, 2L), .Label = c("Female",
"Male"), class = "factor"), type = structure(c(1L, 1L, 2L, 2L
), .Label = c("inclass", "online"), class = "factor"), n = c(26L,
13L, 42L, 69L)), class = "data.frame", row.names = c(NA, -4L))
``````