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)) heads = set() trans = set() for text in corpus: d[text][text] += 1 heads.add(text) trans.add(text) return d,heads,trans
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.