I am trying to do some research with search queries logs. My first interest is to found trends. For example: at winter people often have a cold sore. So i guess that at winter we can see growth of such type queries.
How i want to detect trends:
- Using apriory algorithm or something to get a frequent item set.
- Count number of each set in a time range (one hour, one day etc)
- Use linear regression to found relative function change if this is a regression ax + b, then we just calculate (a*(first_date)+b)/(a*(second_date)+b)
So i have a problem: It's very hard to found frequent item set on large set of data (i have millions queries). I had implemented apriory algorithm but it's working very slow with low support ( for example 2 on 200k queries might take a day)
What is best algorithm in my case? Maybe i can solve my task in another way?