# melt the lower half matrix in R

How can I melt a lower half triangle plus diagonal matrix ?

``````11 NA NA  NA  NA
12 22 NA  NA  NA
13 23 33  NA  NA
14 24 34  44  NA
15 25 35  45  55
A <- t(matrix (c(11,  NA, NA,  NA,  NA, 12, 22, NA,  NA,  NA,
13, 23, 33,  NA,  NA, 14, 24, 34,  44,  NA,15, 25,
35,  45,  55), ncol = 5))

> A
[,1] [,2] [,3] [,4] [,5]
[1,]   11   NA   NA   NA   NA
[2,]   12   22   NA   NA   NA
[3,]   13   23   33   NA   NA
[4,]   14   24   34   44   NA
[5,]   15   25   35   45   55
``````

To data.frame in row and col (preserving the following order)

``````col  row   value
1     1      11
1     2      12
1     3      13
1     4      14
1     5      15
2     2      22
2     3      23
2     4      24
2     5      25
3     3      33
3     4      34
3     5      35
4     4      44
4     5      45
5     5      55
``````
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If you want the indices as columns as well, this should work:

``````m <- matrix(1:25,5,5)
m[upper.tri(m)] <- NA
m

[,1] [,2] [,3] [,4] [,5]
[1,]    1   NA   NA   NA   NA
[2,]    2    7   NA   NA   NA
[3,]    3    8   13   NA   NA
[4,]    4    9   14   19   NA
[5,]    5   10   15   20   25

cbind(which(!is.na(m),arr.ind = TRUE),na.omit(as.vector(m)))
row col
[1,]   1   1  1
[2,]   2   1  2
[3,]   3   1  3
[4,]   4   1  4
[5,]   5   1  5
[6,]   2   2  7
[7,]   3   2  8
[8,]   4   2  9
[9,]   5   2 10
[10,]   3   3 13
[11,]   4   3 14
[12,]   5   3 15
[13,]   4   4 19
[14,]   5   4 20
[15,]   5   5 25
``````

I guess I'll explain this a bit. I'm using three "tricks":

1. The `arr.ind` argument to `which` to get the indices
2. The very useful `na.omit` function to avoid some extra typing
3. The fact that R stores matrices in column major form, hence `as.vector` returns the values in the right order.
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thanks this is great solution - how can we do column within rows (i.e. when level of rows 1 1 1 1...., the column will be 1 2 3 4 ...) –  jon Nov 22 '11 at 11:38
If I understand what you mean, I think the same solution works, but you'll have to sort the result to have them listed in your desired order. –  joran Nov 22 '11 at 15:22

My one liner.

``````reshape2::melt(A, varnames = c('row', 'col'), na.rm = TRUE)
``````
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Simple and fast. –  MYaseen208 Nov 22 '11 at 5:01
One variant `B <- melt(A, varnames = c('row', 'col'))` `B[!is.na(B\$value),]` –  MYaseen208 Nov 22 '11 at 5:08

Here's my first solution:

``````test <- rbind(c(11,NA,NA,NA,NA),
c(12,22,NA,NA,NA),
c(13,23,33,NA,NA),
c(14,24,34,44,NA),

test2 <- as.vector(test)  ## "melt" it into a vector

test <- cbind( test2[!is.na(test2)] )  ## get rid of NAs, cbind it into a column
``````

Results are:

``````> test
[,1]
[1,]   11
[2,]   12
[3,]   13
[4,]   14
[5,]   15
[6,]   22
[7,]   23
[8,]   24
[9,]   25
[10,]   33
[11,]   34
[12,]   35
[13,]   44
[14,]   45
[15,]   55
``````

Alternatively, you can use the matrix command:

``````test <- rbind(c(11,NA,NA,NA,NA),
c(12,22,NA,NA,NA),
c(13,23,33,NA,NA),
c(14,24,34,44,NA),

test2 <- matrix(test, ncol=1)
test <- cbind( test2[!is.na(test2), ] )
## same as above, except now explicitly noting rows to replace.
``````
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This doesn't return the indices of the columns and rows. –  John Nov 22 '11 at 4:04
Ah, apologies; I didn't realize you wanted all those as the result. I'd assumed that those were just to help indicate order of the components. One moment... –  Nate Nov 22 '11 at 4:16
Actually the best way to do that is definitely the "which" command a la @joran's. –  Nate Nov 22 '11 at 4:31

Here is my attempt:

``````# enter the data
df <- c(11,12,13,14,15,NA,22,23,24,25,NA,NA,33,34,35,NA,NA,NA,44,45,NA,NA,NA,NA,55)
dim(df) <- c(5,5)
df

# make new data frame with rows and column indicators
melteddf <- data.frame(
value=df[lower.tri(df,diag=T)],
col=rep(1:ncol(df),ncol(df):1),
row=unlist(sapply(1:nrow(df),function(x) x:nrow(df)))
)
``````

I wish I knew about the arr.ind part of cbind which before now though.

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Here is a method using `arrayInd` which is basically the same as @joran's but might be useful in other settings:

``````na.omit( data.frame(arrayInd(1:prod(dim(A)), dim(A)), value=c(A)) )
X1 X2 value
1   1  1    11
2   2  1    12
3   3  1    13
4   4  1    14
5   5  1    15
7   2  2    22
8   3  2    23
9   4  2    24
10  5  2    25
13  3  3    33
14  4  3    34
15  5  3    35
19  4  4    44
20  5  4    45
25  5  5    55
``````
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