If you only want degree distributions, you likely don't need a graph package at all. I recommend the bigtablulate package so that
- your R objects are file backed so that you aren't limited by RAM
- you can parallelize the degree computation using
Check out their website for more details. To give a quick example of this approach, let's first create an example with an edgelist involving 1 million edges among 1 million nodes.
N <- 1e6
M <- 1e6
edgelist <- cbind(sample(1:N,M,replace=TRUE),
colnames(edgelist) <- c("sender","receiver")
I next concatenate this file 10 times to make the example a bit bigger.
for i in $(seq 1 10)
cat edgelist-small.csv >> edgelist.csv
Next we load the
bigtabulate package and read in the text file with our edgelist. The command
read.big.matrix() creates a file-backed object in R.
x <- read.big.matrix("edgelist.csv", header = FALSE,
type = "integer",sep = ",",
backingfile = "edgelist.bin",
descriptor = "edgelist.desc")
nrow(x) # 1e7 as expected
We can compute the outdegrees by using
bigtable() on the first column.
outdegree <- bigtable(x,1)
Quick sanity check to make sure table is working as expected:
# Check table worked as expected for first "node"
j <- as.numeric(names(outdegree)) # get name of first node
all.equal(as.numeric(outdegree), # outdegree's answer
sum(x[,1]==j)) # manual outdegree count
To get indegree, just do