# Populating a co-occurrence matrix

I am looking for a fast and efficient way to populate a co-occurrence matrix(so as to say). Here is a sample of the data I am working with:

``````col1 col2
a e
a f
a e
b f
c g
a e
d f
a e
a g
b e
c e
``````

And I want a matrix of the following form:

``````... e...  f...  g
a
b
c
d
``````

with the corresponding entry relating to the frequency.

For example, element (3,1) in the matrix would correspond to frequency of the co-occurrence of (c,e) and should have a value of 1 and that of (1,1) should have a value 3 corresponding to 3 entries of (a,e) in the dataset.

I am currently individually calculating the items using two for loops and it takes an extremely long time to compute the matrix (the actual data has about a million rows).

-
sparse matrixes can give you a clue, especially they conversion to non-sparse –  Andrey Oct 11 '12 at 9:38

You can use `sparse` to do exactly what you need:

``````spA = sparse(data(:,1), data(:,2), 1);
``````

where `data` is your data, but as numbers. So you first have to convert alphabetic characters to doubles.

Sparse assembles row/column pairs from `data(:,1)` and `data(:,2)` adding 1 for every occurance of a pair. Note however that if you expect the matrix to be symmetric, you might need to sum `spA` and its transpose, depending on your data.

-
+1: Genius. Small comment though: `sparse` converts the datatype automagically; no need for manual conversion. –  Rody Oldenhuis Oct 11 '12 at 11:03
@RodyOldenhuis it does indeed. But since `a` is 97, the sparse matrix will have empty beginning and only really start at row/column 97. –  angainor Oct 11 '12 at 11:11
Thank you all for your help. –  user1737564 Oct 13 '12 at 20:08

This is a solution in R with `table`:

``````df <- read.table(text="col1 col2
a e
a f
a e
b f
c g
a e
d f
a e
a g
b e
c e", header = TRUE)

table(df)

col2
col1 e f g
a 4 1 1
b 1 1 0
c 1 0 1
d 0 1 0
``````
-