I have a directional network where the nodes are unique users, and the edges indicate retweets. I've imported into Gephi and used its modularity measure for community detection and now have a community label for each user.
The clustering has worked well, but now I'd like to know the degree to which users in each group interact with users outside of their community. Is there a statistic from graph theory designed for this question (preferably implemented in Gephi or Networkx)?
I have tried my own crude measure detailed below, but would prefer a better measure if there is one.
My (crude) Method
So far I have done this by generating a table in Pandas that shows...
interaction_df (pd.DateFrame) source_user target user source_class target_class inter_group_interaction a b 5 5 False a c 5 8 True b c 5 8 True c d 8 10 True d e 10 10 False e a 10 5 True
interaction_counts = interaction_df.groupby('source_class').sum()['inter_group_interaction'] source_class 5 2.0 8 1.0 10 1.0 Name: inter_group_interaction, dtype: float64
...gives me a count of how many instances of
inter_group_interaction occurs for each community
class. If I divide this by the number of unique users in each group I get a comparable measure of
group_counts = interaction_df.drop_duplicates('source_user').source_class.value_counts() 5 2 10 2 8 1 Name: source_class, dtype: int64 interaction_counts / group_counts 5 1.0 8 1.0 10 0.5 dtype: float64
Indicating that users in community
10 are half as interactive with users outside their community as the other two communities.