I'm trying to use the `igraph`

package to draw a (sparse) weighted graph. I currently have an adjacency matrix, but cannot get the `graph.adjacency`

function to recognise the edge weights.

Consider the following random symmetric matrix:

```
m <- read.table(row.names=1, header=TRUE, text=
" A B C D E F
A 0.00000000 0.0000000 0.0000000 0.0000000 0.05119703 1.3431599
B 0.00000000 0.0000000 -0.6088082 0.4016954 0.00000000 0.6132168
C 0.00000000 -0.6088082 0.0000000 0.0000000 -0.63295415 0.0000000
D 0.00000000 0.4016954 0.0000000 0.0000000 -0.29831267 0.0000000
E 0.05119703 0.0000000 -0.6329541 -0.2983127 0.00000000 0.1562458
F 1.34315990 0.6132168 0.0000000 0.0000000 0.15624584 0.0000000")
m <- as.matrix(m)
```

To plot, first I must get this adjacency matrix into the proper `igraph`

format. This should be relatively simple with `graph.adjacency`

. According to my reading of the documentation for `graph.adjacency`

, I should do the following:

```
library(igraph)
ig <- graph.adjacency(m, mode="undirected", weighted=TRUE)
```

However, it doesn't recognise the edge weights:

```
str(ig)
# IGRAPH UNW- 6 8 --
# + attr: name (v/c), weight (e/n)
# + edges (vertex names):
# [1] A--E A--F B--C B--D B--F C--E D--E E--F
plot(ig)
```

How do I get igraph to recognise the edge weights?

`isSymmetric(m)`

, and then compare, e.g., the values of`m[5,3]`

and`m[3,5]`

.)`isSymmetric(round(m,6)) == TRUE`

. Interestingly,`igraph`

retained the version with the most decimal places, and in case of discrepancy added 0 at the end of the number with 7 decimal places.`weight (e/n)`

means that there is an edge attribute called`weight`

, and it is numeric. See`?print.igraph`

. But they are not plotted by default, you need to add them as`edge.label`

.