I'm working on a system/algorithm that will detect topics in a stream of tweets.
What I'll do is remove the stop words, emoticons, urls, etc. and I'm thinking about representing the tweet as follows:
terms = (t1, t2, ..., tk) hashtags = (h1, h2, ..., hn) date = date of tweet
and then use some similarity measures between the tweets when applying some clustering algorithms, combining those 3 values. This will be a little more complex than that, since I'll handle replies (eg. when you reply to some tweet, most of the time you keep talking about the same topics, etc).
I don't know if that will work or not, but the problem I'm seeing so far is that I'm not identifying n-grams, so Barack Obama appear most of time together, and in my system it will be two separate terms (Barack and Obama).
My question is:
How can I also represent bi-grams? I mean, how is it usually modeled?
I thought about having something like the following:
Tweet = `Some words here` terms = `[some, words, here, some words, words here]` ...
but I don't know if that is the correct way to go, if I have to do that for every possible bi-gram, etc.
In my database, I will have all the terms stored. Should I also store the bi-grams as if they were terms?