When you sample from the posterior and take the vertex marginals, is it
proper to say that we can interpret the marginals for a given vertex as
being the degree of membership in the communities (fuzzy community
membership)?

If so, how does this differ from the overlapping blockstate? I saw in the
mailing list that overlapping is only supported at the base level:

http://main-discussion-list-for-the-graph-tool-project.982480.n3.nabble.com/overlapping-in-nestedmodel-tp4027771p4027773.html

But, even if it were supported at every level, what does this achieve that
the fuzzy model averaging doesn't? Could you do model averaging with the
overlapping state too? E.g., in sample 1 vertex A is in communities c1, c2.
In sample 2 vertex A is in communities c1, c4. Etc. Would this be in some
way a more accurate measure of multiple community membership than the fuzzy?

Thanks
_______________________________________________
graph-tool mailing list
[email protected]
https://lists.skewed.de/mailman/listinfo/graph-tool

Reply via email to