This should at the least get your started. The simplest way I could think of to get the `adjacency matrix`

is to `reshape`

this and then build a graph using `igraph`

as follows:

```
# load data
df <- read.table(header=T, stringsAsFactors=F, text=" V1 V2 V3
164885 431072 3
164885 164885 24
431072 431072 5")
> df
# V1 V2 V3
# 1 164885 431072 3
# 2 164885 164885 24
# 3 431072 431072 5
# using reshape2's dcast to reshape the matrix and set row.names accordingly
require(reshape2)
m <- as.matrix(dcast(df, V1 ~ V2, value.var = "V3", fill=0))[,2:3]
row.names(m) <- colnames(m)
> m
# 164885 431072
# 164885 24 3
# 431072 0 5
# load igraph and construct graph
require(igraph)
g <- graph.adjacency(m, mode="directed", weighted=TRUE, diag=TRUE)
> E(g)$weight # simple check
# [1] 24 3 5
# get adjacency
get.adjacency(g)
# 2 x 2 sparse Matrix of class "dgCMatrix"
# 164885 431072
# 164885 1 1
# 431072 . 1
# get shortest paths from a vertex to all other vertices
shortest.paths(g, mode="out") # check out mode = "all" and "in"
# 164885 431072
# 164885 0 3
# 431072 Inf 0
```

stuck. At this point it's not clear that you have attempted to tackle the problem. I think the Stack Overflow FAQ is a good place to start. For questions about R, this post is a must-read. – SlowLearner Feb 13 '13 at 9:50