# How to apply different conditions to each column of a dataframe?

Suppose I have a dataframe with three columns.

``````a <- c(1,2,3,4)
b <- c(2,4,6,8)
c <- c(3,6,9,12)
df <- cbind(a,b,c)
df
``````

This gives you...

``````     a b  c
[1,] 1 2  3
[2,] 2 4  6
[3,] 3 6  9
[4,] 4 8 12
``````

Now suppose I want to create a new dataframe that takes the value TRUE if the value is greater than the column mean and FALSE if it's less than the column mean.

If I use the following command it uses the mean for the whole dataframe.

``````large <- df > mean(df)
large
``````

So I get...

``````         a     b     c
[1,] FALSE FALSE FALSE
[2,] FALSE FALSE  TRUE
[3,] FALSE  TRUE  TRUE
[4,] FALSE  TRUE  TRUE
``````

I would like to get

``````         a     b     c
[1,] FALSE FALSE FALSE
[2,] FALSE FALSE FALSE
[3,] TRUE  TRUE  TRUE
[4,] TRUE  TRUE  TRUE
``````

This method will work for both data.frames and matrices (your example `df` is actually a matrix, not a data.frame)

``````sweep(df, 2, colMeans(df), '>')
#          a     b     c
# [1,] FALSE FALSE FALSE
# [2,] FALSE FALSE FALSE
# [3,]  TRUE  TRUE  TRUE
# [4,]  TRUE  TRUE  TRUE
``````

Or, as suggested by @markus (same output and also works for both matrices and data.frames)

``````scale(df, scale = FALSE) > 0
``````

If it is actually a data.frame, I believe using `Map` as below is faster than the methods above. However, if it is a matrix then using `Map` will not work at all.

``````as.data.frame(Map('>', df, colMeans(df)))
``````
• Don't know if this is any better but you might add this option to your post: `scale(df, scale = FALSE) > 0` Nov 12, 2019 at 21:46

`mean` gets a single value for the whole `matrix`, we need `colMeans`

``````df > colMeans(df)[col(df)]
``````

Or transpose the dataset, do the comparison and transpose

``````t(t(df) > colMeans(df))
``````
• Thanks. Now what if it was a different statistic, like the standard deviation? Nov 12, 2019 at 21:43
• @PashaS. You can use `df > apply(df, 2, sd)[col(df)]`. or a vectorized option with `library(matrixStats)` `df > colSds(df)[col(df)]` Nov 12, 2019 at 21:44