I have two data frames `A`

and `B`

, both of the same dimensions. The row and column labels are not guaranteed to be identically ordered between frames.

Both frames contain values `0`

and `1`

, with `1`

indicating that a directed "edge" exists between a row and column of the frame (and, accordingly, `0`

indicating no connection).

I would like to find "edges" common to both frames. In other words, I want a data frame of the same dimensions as `A`

and `B`

, which contain `1`

values where there is a `1`

at a row and column of both `A`

and `B`

.

Presently, I am looping through rows and columns and testing if both are `1`

.

This works, but I imagine there is a more efficient way of doing this. Is there a way to do the equivalent of a "bitwise AND" operation on row vectors of data frames, which returns a row vector I can stuff back into a new data frame? Or is there another more intelligent (and efficient) approach?

**EDIT**

Matrix multiplication is quite faster than my initial approach. Sorting was the key to making this work.

```
findCommonEdges <- function(edgesList) {
edgesCount <- length(edgesList)
print("finding common edges...")
for (edgesIdx in 1:edgesCount) {
print(paste("...searching against frame", edgesIdx, sep=" "))
edges <- edgesList[[edgesIdx]]
if (edgesIdx == 1) {
# define commonEdges data frame as copy of first frame
commonEdges <- edges
next
}
#
# we reorder edge data frame row and column labels
# to do matrix multiplication and find common edges
#
edges <- edges[order(rownames(commonEdges)), order(colnames(commonEdges))]
commonEdges <- commonEdges * edges
}
commonEdges
}
```