# How to convert co-occurrence matrix to sparse matrix

I am starting dealing with sparse matrices so I'm not really proficient on this topic. My problem is, I have a simple coo-occurrences matrix from a word list, just a 2-dimensional co-occurrence matrix word by word counting how many times a word occurs in same context. The matrix is quite sparse since the corpus is not that big. I want to convert it to a sparse matrix to be able to deal better with it, eventually do some matrix multiplication afterwards. Here what I have done until now (only the first part, the rest is just output format and cleaning data):

``````def matrix(from_corpus):
d = defaultdict(lambda : defaultdict(int))
trans = set()
for text in corpus:
d[text[0]][text[1]] += 1

``````

My idea would be to make a new function:

``````def matrix_to_sparse(d):
A = sparse.lil_matrix(d)
``````

Does this make any sense? This is however not working and somehow I don't the way how get a sparse matrix. Should I better work with numpy arrays? What would be the best way to do this. I want to compare many ways to deal with matrices.

It would be nice if some could put me in the direction.

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this should be of use to you. If you're not doing anything with your dictionary, I would say just put it straight in to a matrix. –  Raufio Feb 22 '13 at 18:00
Yeap, but I also want to map the co-occurrences by words, would that work if I put my corpus straight in to a matrix? I doubt that. –  El_Patrón Feb 22 '13 at 20:42

Here's how you construct a document-term matrix `A` from a set of documents in SciPy's COO format, which is a good tradeoff between ease of use and efficiency(*):

``````vocabulary = {}  # map terms to column indices
data = []        # values (maybe weights)
row = []         # row (document) indices
col = []         # column (term) indices

for i, doc in enumerate(documents):
for term in doc:
# get column index, adding the term to the vocabulary if needed
j = vocabulary.setdefault(term, len(vocabulary))
data.append(1)  # uniform weights
row.append(i)
col.append(j)

A = scipy.sparse.coo_matrix((data, (row, col)))
``````

Now, to get a cooccurrence matrix:

``````A.T * A
``````

(ignore the diagonal, which holds cooccurrences of term with themselves, i.e. squared frequency).

Alternatively, use some package that does this kind of thing for you, such as Gensim or scikit-learn. (I'm a contributor to both projects, so this might not be unbiased advice.)

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Oh yes, I've heard about scikit-learn, but I haven't tried it yet. I guess A.t*A means: transpose A * A, right? Is there any easy way to implement this in python? –  El_Patrón Feb 22 '13 at 18:58
@El_Patrón: `A.T` is Numpy/Scipy syntax for transposition; just copy-paste the expression exactly as I typed it :) –  larsmans Feb 22 '13 at 19:56
OK, thank you. I'm having some problems with "extract_terms(doc)", am I missing so module here? –  El_Patrón Feb 22 '13 at 20:40
@El_Patrón: that's a function you should define yourself. If a document, in your representation, is just a list of terms, then you can skip it entirely. –  larsmans Feb 22 '13 at 21:15
ok, thanks, it should work now. –  El_Patrón Feb 25 '13 at 9:18