# use multiple columns as variables with sapply

I have a `dataframe` and I would like to apply a function that takes the values of three columns and computes the minimum difference between the three values.

``````#dataset
df <- data.frame(a= sample(1:100, 10),b = sample(1:100, 10),c= sample(1:100, 10))

#function
minimum_distance <- function(a,b,c)
{
dist1 <- abs(a-b)
dist2 <- abs(a-c)
dist3 <- abs(b-c)
return(min(dist1,dist2,dist3))
}
``````

I am looking for something like:

``````df\$distance <- sapply(df, function(x) minimum_distance(x\$a,x\$b,x\$c) )
## errormessage
Error in x\$a : \$ operator is invalid for atomic vectors
``````

While I can use ddply:

``````df2 <- ddply(df,.(a),function(r) {data.frame(min_distance=minimum_distance(r\$a,r\$b, r\$c))}, .drop=FALSE)
``````

This doesn't keep all of the columns. Any suggestions?

Edit: I ended up using:

``````df\$distance <- mapply(minimum_distance, df\$a, df\$b, df\$c)
``````
-

Try mapply():

``````qq <- mapply(minimum_distance, df\$a, df\$b, df\$c)
``````
-
simple and elegant. thanks – zach Apr 9 '12 at 19:13

I know this has been answered but I'd actually take a different approach that takes any number of columns and is more generalizable using an outer approach:

``````vdiff <- function(x){
y <- outer(x, x, "-")
min(abs(y[lower.tri(y)]))
}

apply(df, 1, vdiff)
``````

I think this is a little cleaner and flexible.

EDIT: Per zach's comments I propose this more formalized function that works on data frames with non numeric columns as well by removing them and acting only on the numeric columns.

``````cdif <- function(dataframe){
df <- dataframe[, sapply(dataframe, is.numeric)]
vdiff <- function(x){
y <- outer(x, x, "-")
min(abs(y[lower.tri(y)]))
}
return(apply(df, 1, vdiff))
}

#TEST it out
set.seed(10)
(df <- data.frame(a = sample(1:100, 10), b = sample(1:100, 10),
c = sample(1:100, 10), d =  LETTERS[1:10]))

cdif(df)
``````
-
nice idea. my real dataframe is not a matrix however - could this be modified for use in a dataframe with text columns? something like outer(x,x,"-", drop_string=T)? – zach Apr 9 '12 at 21:55
The function `outer` doesn't necessarily mean you're working on a matrix. It just takes two vectors and a function and makes a matrix of all possible combinations for those two vectors. Here I just supply the same vector (the row) to outer twice and the function subtraction `-` operator. I added a bit to my solution to make a self contained function that acts on data frames and excludes anything that's not numeric. `outer` can be very powerful I just wished I could remember to use it more. As far as the drop_string = T? No such luck but `sapply` with an `is.numeric` query works well. – Tyler Rinker Apr 9 '12 at 22:13
very nice. I agree that outer is quite powerful and that for a larger matrix this would be the way to go rather than specifying each column or value. – zach Apr 9 '12 at 22:31
Note: That because this answer is more generalizable it is likely that it also slower, not sure how much of an issue speed is (ie how big your data set is). – Tyler Rinker Apr 9 '12 at 22:31
in this case speed is not a problem but I will keep this in mind. thanks tyler. – zach Apr 9 '12 at 22:34

try this:

``````do.call("mapply", c(list(minimum_distance), df))
``````

but you can write vectorized version:

``````pminimum_distance <- function(a,b,c)
{
dist1 <- abs(a-b)
dist2 <- abs(a-c)
dist3 <- abs(b-c)
return(pmin(dist1,dist2,dist3))
}
pminimum_distance(df\$a, df\$b, df\$c)

# or
do.call("pminimum_distance", df)
``````
-
this is smart but a little less straightforward thank mapply. – zach Apr 9 '12 at 19:15