# R: Rearrange matrix into three columns

I have a matrix in R. Each entry `i`,`j` is a score and the rownames and colnames are ids.

Instead of the matrix I just want a 3 column matrix that has: `i`,`j`,`score`

Right now I'm using nested for loops. Like:

``````for(i in rownames(g))
{
print(which(rownames(g)==i))
for(j in colnames(g))
{
cur.vector<-c(cur.ref, i, j, g[rownames(g) %in% i,colnames(g) %in% j])
rbind(new.file,cur.vector)->new.file
}

}
``````

But thats very inefficient I think...I'm sure there's a better way I'm just not good enough with R yet. Thoughts?

• Please post the content of your matrix using `dput(g)`- it will make it much easier to understand your problem Mar 28, 2012 at 18:32
• Future searchers, see answers to the reverse operation here: stackoverflow.com/q/9617348/210673 Mar 29, 2012 at 1:03

If I understand you correctly, you need to flatten the matrix.
You can use `as.vector` and `rep` to add the id columns e.g. :

``````m = cbind(c(1,2,3),c(4,5,6),c(7,8,9))
row.names(m) = c('R1','R2','R3')
colnames(m) = c('C1','C2','C3')

d <- data.frame(i=rep(row.names(m),ncol(m)),
j=rep(colnames(m),each=nrow(m)),
score=as.vector(m))
``````

Result:

``````> m
C1 C2 C3
R1  1  4  7
R2  2  5  8
R3  3  6  9

> d
i  j score
1 R1 C1     1
2 R2 C1     2
3 R3 C1     3
4 R1 C2     4
5 R2 C2     5
6 R3 C2     6
7 R1 C3     7
8 R2 C3     8
9 R3 C3     9
``````

Please, note that this code converts a matrix into a `data.frame`, since the row and col names can be string and you can't have a matrix with different column type.
If you are sure that all row and col names are numbers, you can coerced it to a matrix.

If you convert your matrix first to a table (with `as.table`) then to a data frame (`as.data.frame`) then it will accomplish what you are asking for. A simple example:

``````> tmp <- matrix( 1:12, 3 )
> dimnames(tmp) <- list( letters[1:3], LETTERS[4:7] )
> as.data.frame( as.table( tmp ) )
Var1 Var2 Freq
1     a    D    1
2     b    D    2
3     c    D    3
4     a    E    4
5     b    E    5
6     c    E    6
7     a    F    7
8     b    F    8
9     c    F    9
10    a    G   10
11    b    G   11
12    c    G   12
``````
• that worked most easy for me. however, I had to turn my data.frame first into a matrix, then into a table, and then into a data frame again :)
– Jens
Oct 13, 2015 at 13:31