R: find row and column where one variable exceeds all others until last row

I have data like this (generated by a program rather than by hand, but this is to serve as an example):

``````a<-c(10,12,18,25,24,26,26,26,22,21)
b<-c(12,14,14,24,27,26,26,25,20,18)
x<-c(12,18,20,18,16,14,18,18,20,20)
d<-as.data.frame(cbind(a,b,x))

d
a  b  x
1  10 12 12
2  12 14 18
3  18 14 20
4  25 24 18
5  24 27 16
6  26 26 14
7  26 26 18
8  26 25 18
9  22 20 20
10 21 18 20
``````

I want to find out which of the 3 variables 'wins', where winning means to have higher value than any other variable from some row until the final row. So in this example, d\$a wins, because it has the row-wise maximum value from row 8 onwards -- even though the maximum overall value occurs for d\$b at row 6.

So the answer I'd be looking for here would be that d\$a wins because it 'dominates' from row 8 onwards.

I can do this with loops, but the reason I'm switching to R is to get away from that approach. Also, the real data has several hundred columns and a few thousand rows, so loops would be quite slow. Any advice would be greatly appreciated! Thanks.

-
Note that the maximum overall value for `d\$b` does not occur at row six but at row five! – user1981275 Nov 19 '13 at 17:24

Compute per-row maximum values

``````> m<-apply(d,1,max)
> m
[1] 12 18 20 25 27 26 26 26 22 21
``````

Now `d==m` tells you which cells equal the maximum per row

``````> d==m
a     b     x
[1,] FALSE  TRUE  TRUE
[2,] FALSE FALSE  TRUE
[3,] FALSE FALSE  TRUE
[4,]  TRUE FALSE FALSE
[5,] FALSE  TRUE FALSE
[6,]  TRUE  TRUE FALSE
[7,]  TRUE  TRUE FALSE
[8,]  TRUE FALSE FALSE
[9,]  TRUE FALSE FALSE
[10,]  TRUE FALSE FALSE
``````

So the idea is to see what column has the last `FALSE` closest to the top. That is the one that wins (I think this is what you mean).

``````# Per-column last row index that equals FALSE
> d2<-apply(d==m,2,function(x){rev(which(x==F))[1]})
> d2
a  b  x
5 10 10
``````

Now you have the column that wins (`a`) and from what row (`5`). You can get them like this:

``````o<-order(d2)
win.row<-d2[o[1]]
win.col<-o[1]
win.colname<-names(win.row)
``````
-
Thank you, Julián. This is tantalizingly close and very instructive! I can see that a wins, and does so after row 5, but where I'm stuck is how I now act on / extract the relevant information in d2. I think a general way to do that would be if I knew how to identify the row, column, and value of the element in a vector or matrix holding the minimum value. Do you happen to know how to do that? – user20412 Nov 19 '13 at 19:45
@user20412 see the edited answer – Julián Urbano Nov 19 '13 at 20:00
Julián's answer provides a great solution. However, I realized that for this example, the desired answer would actually be row 8 for a -- that is the row where a not only has the row maximum value, but it is greater than all other columns. I'm spinning my wheels trying to figure this out... Any advice? – user20412 Nov 30 '13 at 11:58
Ah, I found a solution. Use `o` to drop the 'winner' column (`db <- d[,c(o[-1])]`), then find the max of the remaining columns (`mb <- apply(db,1,max)`), and find then the LAST column where the winner does NOT exceed all others (`dwin <- apply(t(d[,o[1]] > mb),1,function(x){rev(which(x==F))[1]})`). Thanks again, Julián -- I continue to learn from this solution! – user20412 Nov 30 '13 at 13:13
@user20412 best way to say thanks is to accept the answer ;-) – Julián Urbano Dec 1 '13 at 3:27

Something like this, although I have a feeling I not understand your question correctly -

``````whichrow <- 8

gsub(
x = names(
which.max(
unlist(
d[whichrow:nrow(d),]
)
)
),
pattern = '[[:digit:]]',
replacement = ''
)
``````

For your whole dataset, you could run something like this -

``````d[,"whichmax"] <- ""
for ( i in 1:10)
{
d[i,"whichmax"] <- gsub(
x = names(
which.max(
unlist(
d[i:nrow(d),]
)
)
),
pattern = '[[:digit:]]',
replacement = ''
)
}
``````

The for-loop doesn't hurt in this case, is there some other reason you're avoiding the loop? The output from the second function is as under -

``````> d
a  b  x whichmax
1  10 12 12        b
2  12 14 18        b
3  18 14 20        b
4  25 24 18        b
5  24 27 16        b
6  26 26 14        a
7  26 26 18        a
8  26 25 18        a
9  22 20 20        a
10 21 18 20        a
``````
-
Nice -- this gives me 'whichmax', but what I'm trying to do is pretty nonintuitive and not quite that. Please see my response to dacannon below asking for clarification. – user20412 Nov 19 '13 at 19:46
Actually, I was unable to add a comment to dacannon's post, so here's what I intended to say: The data are actually activations in a neural network. As in the example data, the 'winner' is the node that rises to the top rank and then stays there. So d\$b temporarily achieves highest rank, but doesn't stay there. d\$a achieves highest rank with a peak value less than d\$b's, but then stays there (though the values for each column continue to decrease). – user20412 Nov 19 '13 at 19:49
`whichmax` is actually the max amongst all elements of the remaining rows. So the fact that the latter rows on `whichmax` are all "a", would mean that "a" rose to the top and stayed there. Therefore "a" is your answer. What exactly is the clarification you're seeking? – TheComeOnMan Nov 19 '13 at 19:58

This gives you the column name with the maximum entry from row 8 onwards:

``````> rev(colnames(d)[order(apply(d[8:nrow(d),], 2, max))])[1]
[1] "a"
``````

Ah, in combination with Julián's answer above, I can do this to get the name of the column I need -- thanks! `names(d2)[order(apply(t(d2),2,min))[1]]` – user20412 Nov 19 '13 at 19:57