I am working on a document clustering problem, and to do so I need to get the word frequency of a document's dataset.
At the moment, I'm using a trivial approach : I create a word table and I add as many columns as the number of documents the dataset contained, obtaining something like
word | document1 | document2 | ... | document n |
This approach, even if kind of slow, works for small datasets ( containing less han 100 documents ). The problem is that now I must deal with huge ones, containing 700+ documents each, and I feel like there must be a smarter way to deal with it: the problem is, I can't think of anything else.
So, the question is : how can I efficiently keep track of the word frequency per document?
PS: Consider that both the number of words per document or the dataset size are unknown, but a reasonable upper bound should be 2000 words per document, and 2000 documents per dataset.