# Select max or equal value from several columns in a data frame

I'm trying to select the column with the highest value for each row in a data.frame. So for instance, the data is set up as such.

``````> df <- data.frame(one = c(0:6), two = c(6:0))
> df
one two
1   0   6
2   1   5
3   2   4
4   3   3
5   4   2
6   5   1
7   6   0
``````

Then I'd like to set another column based on those rows. The data frame would look like this.

``````> df
one two rank
1   0   6    2
2   1   5    2
3   2   4    2
4   3   3    3
5   4   2    1
6   5   1    1
7   6   0    1
``````

I imagine there is some sort of way that I can use plyr or sapply here but it's eluding me at the moment.

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Can you elaborate on how you get the results? –  Roman Luštrik May 13 at 18:02
I want to be able to produce the rank column somehow. So for instance, if df\$one > df\$two, df\$rank would equal 1, df\$two > df\$one, df\$rank <- 2, and df\$one == df\$two <- 3. But I want to have a more complex set of rules than that, such that if there are three columns, I check if there's total equality(one == two == three), etc. –  raynach May 13 at 18:06
What if one and two are equal, and both are greater than three? What if two and three are equal, and less than one? etc., etc. I think you should give an example that's a bit closer to what you actually want, or else you're likely to get many answers that treat special cases/aren't general enough for you. –  Josh O'Brien May 13 at 18:11
@JoshO'Brien, I think, from his comment, as long as they are both equal, the rank is 3. –  Arun May 13 at 18:14
@Arun -- I guess I was just thrown off by the reference to `one == two == three` in the comment above. –  Josh O'Brien May 13 at 18:17
show 1 more comment

There might be a more efficient solution, but

``````ranks <- apply(df, 1, which.max)
ranks[which(df[, 1] == df[, 2])] <- 3
``````

edit: properly spaced!

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Thanks, I think this is basically what I need. –  raynach May 13 at 18:13
`apply` on a data.frame if it can be avoided, should be. It internally converts to matrix which can be quite time consuming on large data. –  Arun May 13 at 18:26
heh, will do! I'm assuming google-styleguide.googlecode.com/svn/trunk/google-r-style.html is a good guide. –  Hilary Parker May 17 at 4:13
Yep, that's a good one. –  Jack Ryan May 30 at 12:40

So, I was thinking about that more-column case mentioned in the comments, since I often find myself stumbling through similar problems.

Here's what I found, using the `data.table` package. First, setup:

``````set.seed(1024)
samplit <- function(n) sample(1:10,n,replace=TRUE)
n       <- 5
dt      <- data.table(a=samplit(n),b=samplit(n),c=samplit(n))
``````

And here's the query:

``````dt[,c(.SD,rnk=as.list(rank(.SD))),by=1:nrow(dt)]

#    nrow  a b  c rnk.a rnk.b rnk.c
# 1:    1  3 8  1   2.0     3   1.0
# 2:    2 10 2 10   2.5     1   2.5
# 3:    3  4 4  4   2.0     2   2.0
# 4:    4  4 6  5   1.0     3   2.0
# 5:    5  1 6 10   1.0     2   3.0
``````

From here, you can deal with ties however you want. Check out `?rank` if it's not obvious what those new columns are doing.

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