EDIT: To people building tagging systems. Don't read this. It is not what you are looking for. I asked this when I wasn't aware that RDBMS all have their own optimization methods, just use a simple many to many scheme.
I have a posting system that has millions of posts. Each post can have an infinite number of tags associated with it.
Users can create tags which have notes, date created, owner, etc. A tag is almost like a post itself, because people can post notes about the tag.
Each tag association has an owner and date, so we can see who added the tag and when.
My question is how can I implement this? It has to be fast searching posts by tag, or tags by post. Also, users can add tags to posts by typing the name into a field, kind of like the google search bar, it has to fill in the rest of the tag name for you.
I have 3 solutions at the moment, but not sure which is the best, or if there is a better way.
Note that I'm not showing the layout of notes since it will be trivial once I get a proper solution for tags.
Method 1. Linked list
tagId in post points to a linked list in tag_assoc, the application must traverse the list until flink=0
post: id, content, ownerId, date, tagId, notesId tag_assoc: id, tagId, ownerId, flink tag: id, name, notesId
Method 2. Denormalization
tags is simply a VARCHAR or TEXT field containing a tab delimited array of tagId:ownerId. It cannot be a fixed size.
post: id, content, ownerId, date, tags, notesId tag: id, name, notesId
Method 3. Toxi
post: id, content, ownerId, date, notesId tag_assoc: ownerId, tagId, postId tag: id, name, notesId
Method 3 raises the question, how fast will it be to iterate through every single row in tag_assoc?
Methods 1 and 2 should be fast for returning tags by post, but for posts by tag, another lookup table must be made.
The last thing I have to worry about is optimizing searching tags by name, I have not worked that out yet.
I made an ASCII diagram here: http://pastebin.com/f1c4e0e53