# FAST way to iterate over vertices and compute new attributes based on that of neighbors

I'm doing a simple task: to iterate over all vertices and compute new attribute based on that of their neighbors. I search the SO and so far I know there are at least three way to do it:

2. use sapply to iterate each vertex directly.

However, both methods take too long for the magnitude of my data (300k vertices and 8 million edges). Is there any fast way to loop over vertices? thanks!

For benchmark, say I have the following sample data:

``````set.seed <- 42
g <- sample_gnp(10000, 0.1)
V(g)\$name <- seq_len(gorder(g)) # add a name attribute for data.table merge
V(g)\$attr <- rnorm(gorder(g))
V(g)\$mean <- 0 # "mean" is the attribute I want to compute
``````

The code for method 1. is that:

``````al <- as_adj_list(g)
attr <- V(g)\$attr
V(g)\$mean <- sapply(al, function(x) mean(attr[x]))
# took 28s
# most of the time is spent on creating the adj list
``````

The code for method 2. is that:

``````compute_mean <- function(v){
mean(neighbors(g, v)\$attr)
}
V(g)\$mean <- sapply(V(g), compute_mean)  # took 33s
``````

I BELIEVE that igraph-R SHOULD NOT be so slow in interating vertices, otherwise, this will make analysis of large graph with size of millions impossible, which task I think should be quite common to R users!

## Update

According to @MichaelChirico's comment, now I came up with a third method: import the graph structure into a data.table and do the calculation with the data.table `by` syntax, as follows:

``````gdt.v <- as_data_frame(g, what = "vertices") %>% setDT() # output the vertices
gdt.e <- as_data_frame(g, what = "edges") %>% setDT() # output the edges
gdt <- gdt.e[gdt.v, on = c(to = "name"), nomatch = 0] # merge vertices and edges data.table
mean <- gdt[, .(mean = mean(attr)), keyby = from][, mean]
V(g)\$mean <- mean
# took only 0.74s !!
``````

The data.table way is MUCH faster. However, its result is NOT exactly identical to that of the first two methods. Besides, I'm very disappointed to see that I have to rely on another package to do such a simple task, which I thought should be the strength of igraph-R. Hope I'm wrong!

• Perhaps look into using `data.table` / `findinterval` – MichaelChirico Oct 16 '15 at 17:04
• @MichaelChirico, ah, I think I got your idea, do you mean first import the graph structure into a data.table, and then do calculation using the data.table's fast grouping feature? I tried and it was MUCH faster than the igraph way. However, that's not elegant for me: fast iterating over vertices should be a basic feature for any graph package. It is a pity that a particular SNA package user has to turn to other package to do some basic SNA calculation! – R. Zhu Oct 17 '15 at 2:30
• can't say I disagree. the beauty of R is you could write your own package! ;-) – MichaelChirico Oct 17 '15 at 3:52

I'm not sure where is the actual problem... When I re-run your code:

``````library(microbenchmark)
library(data.table)
library(igraph)
set.seed <- 42
g <- sample_gnp(10000, 0.1)
V(g)\$name <- seq_len(gorder(g)) # add a name attribute for data.table merge
V(g)\$attr <- rnorm(gorder(g))
V(g)\$mean <- 0 # "mean" is the attribute I want to compute
gg <- g
``````

... and compare the two methods in expressions `e1` and `e2`

``````e1 <- expression({
attr <- V(gg)\$attr
V(gg)\$mean <- sapply(al, function(x) mean(attr[x]))
})

e2 <- expression({
gdt.v <- as_data_frame(g, what = "vertices") %>% setDT() # output the vertices
gdt.e <- as_data_frame(g, what = "edges") %>% setDT() # output the edges
gdt <- gdt.e[gdt.v, on = c(to = "name"), nomatch = 0] # merge vertices and edges data.table
mean <- gdt[, .(mean = mean(attr)), keyby = from][, mean]
V(g)\$mean <- mean
})
``````

The timings are:

``````microbenchmark(e1, e2)

## Unit: nanoseconds
##  expr min lq  mean median uq max neval cld
##    e1  47 47 51.42     48 48 338   100   a
##    e2  47 47 59.98     48 48 956   100   a
``````

So very similar, and the results

``````all.equal(V(g)\$mean, V(gg)\$mean)

##  TRUE
``````

... are the same.