Learning the Nature of Information in Social Networks
Agrawal, Rakesh (Microsoft) | Potamias, Michalis (Groupon) | Terzi, Evimaria (Boston University)
We postulate that the nature of information items plays a vital role in the observed spread of these items in a social network. We capture this intuition by proposing a model that assigns to every information item two parameters: endogeneity and exogeneity. The endogeneity of the item quantifies its tendency to spread primarily through the connections between nodes; the exogeneity quantifies its tendency to be acquired by the nodes, independently of the underlying network. We also extend this item-based model to take into account the openness of each node to new information. We quantify openness by introducing the receptivity of a node. Given a social network and data related to the ordering of adoption of information items by nodes, we develop a maximum-likelihood framework for estimating endogeneity, exogeneity and receptivity parameters. We apply our methodology to synthetic and real data and demonstrate its efficacy as a data-analytic tool.
Feb-22-2012
- Country:
- North America > United States (0.14)
- Industry:
- Government (0.68)
- Information Technology > Services (0.82)