We study the problem of extracting a selective connector for a given set of
query vertices Q⊆V in a graph G=(V,E). A selective connector is
a subgraph of G which exhibits some cohesiveness property, and contains the
query vertices but does not necessarily connect them all. Relaxing the
connectedness requirement allows the connector to detect multiple communities
and to be tolerant to outliers. We achieve this by introducing the new measure
of network inefficiency and by instantiating our search for a selective
connector as the problem of finding the minimum inefficiency subgraph.
We show that the minimum inefficiency subgraph problem is NP-hard, and devise
efficient algorithms to approximate it. By means of several case studies in a
variety of application domains (such as human brain, cancer, and food
networks), we show that our minimum inefficiency subgraph produces high-quality
solutions, exhibiting all the desired behaviors of a selective connector.Comment: In Proceedings of the 26th ACM conference on Information and
Knowledge Management (CIKM 2017