So here is my problem. I have a very large csv file that has 3 columns. The first column is unique ids. The second column is a string that is an english sentence. The third column is a string of word tags that describe the sentence in the second column (usually 3 tags, max of 5). Here is an example.
id | sentence | tags 1 | "people walk dogs in the park" | "pet park health" 2 | "I am allergic to dogs" | "allergies health"
What I want to do is find all of the co-occurrences of tag words with words in sentences. So the desired output for the above example would look something like.
("walk","pet"),1 ("health","dogs"),2 ("allergies","dogs"),1 etc...
where the first entry is a word pair (the first from the sentence, the second is a tag word) and then the number of times they co-occur.
I am wondering what the best way to do this is. I was thinking perhaps I could come up with a python dictionary where the key is a tag word and the value is the set of ids where that tag word appears. I could do the same with all of the words that appear in all sentences (after removing stop-words). Then I could count the number of ids in the intersection of both sets for every combination of the two words which would give me the number of times they co-occur.
However, this seems like it would take a very long time (huge csv file!). I also might run out of memory. Can anyone think of a better way to do this. Maybe import the file into a database and run some sort of query?