# Automated data frame summaries with mixed data types

I am trying to automatically create a new data frame that, given an existing data frame, contains either the median of a numerical variable or the most common category for a factor. So:

``````Number Factor
3      A
2      A
5      B
``````

Should turn into

``````Number Factor
3      A
``````

I can calculate it for each variable individually. For purely numerical variables I could even use the colMeans command. For purely factor variables I would use which.max(). But I have not been able to combine the two into a scalable and flexibe solution

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I am confused, are you summing the `Number` column for most common factor? – Nishanth Apr 9 '13 at 12:49
Surely your median is 3? – Simon O'Hanlon Apr 9 '13 at 13:08
Yes, of course it is. Switched median and mean concepts in my head. Thanks for the cleanup. – CGN Apr 9 '13 at 13:13

you can test something like that:

``````FUN <- function(x) {
if (is.numeric(x))
return(median(x))
else
x <- sort(as.character(x))
rl1 <- rle(x)
rl1\$val[which.max(rl1\$le)]
}

as.data.frame(lapply(tab, FUN))
aggregate(tab, by=list(gl(1,nrow(tab))), FUN=FUN)
# even easier
bob <- lapply(tab, function(x) if(is.numeric(x)) median(x) else x[median(as.numeric(x))])
as.data.frame(bob)
``````
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That did the trick. Thank you. – CGN Apr 9 '13 at 13:11

You can use `lapply` with `if` branching:

``````y <- read.table(text = "Number Factor
3      A
2      A
5      B", header = TRUE)

as.data.frame(lapply(y, function(x) {
if (is.numeric(x)) return (median(x))
else return(x[which.max(table(x))])
}))
``````
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I do not think that returns a mode, but rather would return the last level of a factor. – 42- Apr 9 '13 at 13:05
Simply edit it to use `which.max(table(x))` then it works. +1 from me – Simon O'Hanlon Apr 9 '13 at 13:06
@SimonO101 Thanks for noticing that. – Henrik Apr 9 '13 at 13:19
``````as.data.frame( lapply(dfrm, function(x) if(is.numeric(x)) {
median(x) } else {
names(sort( table(x) , decreasing=TRUE )[1])
})
)
``````
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