Evolution of Social Power in Social Networks with Dynamic Topology

Date

2018

Authors

Ye, Mengbin
Liu, Ji
Anderson, Brian
Yu, Changbin(Brad)
Basar, Tamer

Journal Title

Journal ISSN

Volume Title

Publisher

Institute of Electrical and Electronics Engineers (IEEE Inc)

Abstract

The recently proposed DeGroot-Friedkin model describes the dynamical evolution of individual social power in a social network that holds opinion discussions on a sequence of different issues. This paper revisits that model, and uses nonlinear contraction analysis, among other tools, to establish several novel results. First, we show that for a social network with constant topology, each individual's social power converges to its equilibrium value exponentially fast, whereas previous results only concluded asymptotic convergence. Second, when the network topology is dynamic (i.e., the relative interaction matrix may change between any two successive issues), we show that each individual exponentially forgets its initial social power. Specifically, individual social power is dependent only on the dynamic network topology, and initial (or perceived) social power is forgotten as a result of sequential opinion discussion. Last, we provide an explicit upper bound on an individual's social power as the number of issues discussed tends to infinity; this bound depends only on the network topology. Simulations are provided to illustrate our results.

Description

Keywords

Discrete-time, dynamic topology, nonlinear contraction analysis, opinion dynamics, social networks, social power

Citation

Source

IEEE Transactions on Automatic Control

Type

Journal article

Book Title

Entity type

Access Statement

License Rights

Restricted until

2099-12-31