Suppose I have a large (300-500k) collection of text documents stored in the relational database. Each document can belong to one or more (up to six) categories. I need users to be able to randomly select documents in a specific category so that a single entity is never repeated, much like how StumbleUpon works.
I don't really see a way I could implement this using slow NOT IN queries with large amount of users and documents, so I figured I might need to implement some custom data structure for this purpose. Perhaps there is already a paper describing some algorithm that might be adapted to my needs?
Currently I'm considering the following approach:
- Read all the entries from the database
- Create a linked list based index for each category from the IDs of documents belonging to the this category. Shuffle it
- Create a Bloom Filter containing all of the entries viewed by a particular user
- Traverse the index using the iterator, randomly select items using Bloom Filter to pick not viewed items.