# Categorical Variables Table with Percentages in R

I have a series of categorical variables that have the response options (Favorable, Unfavorable, Neutral).

I want to create a table in R that will give the list of all 10 variables in rows (one variable per row) - with the percentage response "Favorable, Unfavorable, Neutral" in the columns. Is this possible in R? Ideally, I would also want to be able to group this by another categorical variable (e.g. to compare how males vs. females responded to the questions differently).

You'll get better answers if you provide a sample of your actual data (see this post). That said, here is a solution using `dplyr::` (and `reshape2::melt`).

``````# function to create a column of fake data
make_var <- function(n=100) sample(c("good","bad","ugly"), size=n, replace=TRUE)

# put ten of them together
dat <- as.data.frame(replicate(10, make_var()), stringsAsFactors=FALSE)

library("dplyr")

# then reshape to long format, group, and summarize --
dat %>% reshape2::melt(NULL) %>% group_by(variable) %>% summarize(
good_pct = (sum(value=="good") / length(value)) * 100,
bad_pct = (sum(value=="bad") / length(value)) * 100,
ugly_pct = (sum(value=="ugly") / length(value)) * 100
)
``````

Note that to group by another column (e.g. sex), you can just say `group_by(variable, sex)` before you summarize (as long as `sex` is a column of the data, which isn't the case in this constructed example).

Adapting `lefft`'s example but trying to do everything in `dplyr`:

``````dat %>%
gather(variable, value) %>%
group_by(variable) %>%
count(value) %>%
mutate(pct = n / sum(n) * 100) %>%
select(-n) %>%