Binary Opinion Dynamics with Stubborn Agents

Author:

Yildiz Ercan1,Ozdaglar Asuman2,Acemoglu Daron2,Saberi Amin3,Scaglione Anna4

Affiliation:

1. Accenture Technology Labs

2. Massachusetts Institute of Technology

3. Stanford University

4. University of California, Davis

Abstract

We study binary opinion dynamics in a social network with stubborn agents who influence others but do not change their opinions. We focus on a generalization of the classical voter model by introducing nodes (stubborn agents) that have a fixed state. We show that the presence of stubborn agents with opposing opinions precludes convergence to consensus; instead, opinions converge in distribution with disagreement and fluctuations. In addition to the first moment of this distribution typically studied in the literature, we study the behavior of the second moment in terms of network properties and the opinions and locations of stubborn agents. We also study the problem of optimal placement of stubborn agents where the location of a fixed number of stubborn agents is chosen to have the maximum impact on the long-run expected opinions of agents.

Funder

Division of Social and Economic Sciences

Air Force Office of Scientific Research

Army Research Office

Division of Computing and Communication Foundations

Draper UR&D program

Publisher

Association for Computing Machinery (ACM)

Subject

Computational Mathematics,Marketing,Economics and Econometrics,Statistics and Probability,Computer Science (miscellaneous)

Reference35 articles.

1. Daron Acemoglu and Asuman Ozdaglar. 2010. Opinion dynamics and learning in social networks. Dynamic Games Appl. 1--47. DOI:http://dx.doi.org/10.1007/s13235-010-0004-110.1007/s13235-010-0004-1. Daron Acemoglu and Asuman Ozdaglar. 2010. Opinion dynamics and learning in social networks. Dynamic Games Appl. 1--47. DOI:http://dx.doi.org/10.1007/s13235-010-0004-110.1007/s13235-010-0004-1.

2. Daron Acemoglu Giacomo Como Fabio Fagnani and Asuman Ozdaglar. 2010a. Opinion fluctuations and disagreement in social networks. LIDS Tech. rep. 2850. MIT. DOI:http://web.mit.edu/asuman/www/documents/disagreementsubmitted.pdf. LIDS. Daron Acemoglu Giacomo Como Fabio Fagnani and Asuman Ozdaglar. 2010a. Opinion fluctuations and disagreement in social networks. LIDS Tech. rep. 2850. MIT. DOI:http://web.mit.edu/asuman/www/documents/disagreementsubmitted.pdf. LIDS.

3. Bayesian Learning in Social Networks

4. Opinion Dynamics and Learning in Social Networks

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