Title :
Structure of Heterogeneous Networks
Author :
Ghosh, Rumi ; Lerman, Kristina
Author_Institution :
Inf. Sci. Inst., Univ. of Southern California, Marina del Rey, CA, USA
Abstract :
Heterogeneous networks play a key role in the evolution of communities and the decisions individuals make. These networks link different types of entities, for example, people and the events they attend. Network analysis algorithms usually project such networks unto simple graphs composed of entities of a single type. In the process, they conflate relations between entities of different types and loose important structural information.We develop a mathematical framework that can be used to compactly represent and analyze heterogeneous networks that combine multiple entity and link types. We generalize Bonacich centrality, which measures connectivity between nodes by the number of paths between them, to heterogeneous networks and use this measure to study network structure. Specifically, we extend the popular modularity maximization method for community detection to use this centrality metric. We also rank nodes based on their connectivity to other nodes. One advantage of this centrality metric is that it has a tunable parameter we can use to set the length scale of interactions. By studying how rankings change with this parameter allows us to identify important nodes in the network.We apply the proposed method to analyze the structure of several heterogeneous networks. We show that exploiting additional sources of evidence corresponding to links between, as well as among, different entity types yields new insights into network structure.
Keywords :
network theory (graphs); optimisation; Bonacich centrality; centrality metric; community detection; community evolution; heterogeneous network structure; interaction length scale; link type combination; mathematical framework; modularity maximization method; multiple entity combination; network analysis algorithm; tunable parameter; Algorithm design and analysis; Bipartite graph; Computer networks; Data mining; Detection algorithms; Joining processes; Matrices; Nonhomogeneous media; Photography; Social network services; Bonacich centrality; Heterogeneous networks; community detection; leaders; node ranking;
Conference_Titel :
Computational Science and Engineering, 2009. CSE '09. International Conference on
Conference_Location :
Vancouver, BC
Print_ISBN :
978-1-4244-5334-4
Electronic_ISBN :
978-0-7695-3823-5
DOI :
10.1109/CSE.2009.142