First of all I'm sorry if my english is a bit off (it's not my mother language). I'll try my best to make myself understood.
I'm making a visualization project for my master thesis and I've come up with an algorithm problem. The visualization consists of a graph that represents connections between what I call artefacts (the nodes of the graph) by what I call keywords (the edges). These artefacts can be a variety of things. For example, they can represent photos and the edges would represent tags between the photos. For illustration purposes imagine Photo A connected to Photo B by Tag 1. This means that the Photo A and the Photo B both have the Tag 1.
Now, I have an operation called expansion that works this way:
A user double clicks on a node (in my example a photo) and the program queries the database for every new connection to that node. In the example above if a user double clicked on Photo B the expansion would generate, for example, Photo C and Photo D with Tags 2 and 3, respectively. The problem is that this can generate a lot of data leaving me with the solution of grouping nodes. The ideal would be to group with the maximum common keywords (edges) possible. For example, imagine now that Photo C and D both had the tag 5 there would be a group with C and D with the edge 5. But if Photo D and E both had tag 5 and 6, the group be D and E with edges 5 and 6, and then Photo C with edge 5 (edges can be repeated). To illustrate:
5,6 A----B -> expand B -> A----B-----DE 1 1 | |5 | C
My problem is getting this algorithm done. On the database I have the following tables:
Keyword (keyword_id, other_attributes)
Artefact (artefact_id, other_attributes)
Keyword_Artefact (keyword_id, artefact_id)
Keyword_Artefact_Artefact (keyword_id, artefact_id1, artefact_id2)
What would be the best approach to this problem? One that can be done with a fairly amount of data.
I'm developing this program in java, using the prefuse library.