Biased Opinion Dynamics: When the Devil is in the Details

Author:

Anagnostopoulos Aris1,Becchetti Luca1,Cruciani Emilio2,Pasquale Francesco3,Rizzo Sara4

Affiliation:

1. Sapienza University of Rome

2. I3S Lab, INRIA

3. University of Rome Tor Vergata

4. Gran Sasso Science Institute

Abstract

We investigate opinion dynamics in multi-agent networks when there exists a bias toward one of two possible opinions; for example, reflecting a status quo vs a superior alternative. Starting with all agents sharing an initial opinion representing the status quo, the system evolves in steps. In each step, one agent selected uniformly at random adopts with some probability a the superior opinion, and with probability 1 - a it follows an underlying update rule to revise its opinion on the basis of those held by its neighbors. We analyze the convergence of the resulting process under two well-known update rules, namely majority and voter. The framework we propose exhibits a rich structure, with a nonobvious interplay between topology and underlying update rule. For example, for the voter rule we show that the speed of convergence bears no significant dependence on the underlying topology, whereas the picture changes completely under the majority rule, where network density negatively affects convergence. We believe that the model we propose is at the same time simple, rich, and modular, affording mathematical characterization of the interplay between bias, underlying opinion dynamics, and social structure in a unified setting.

Publisher

International Joint Conferences on Artificial Intelligence Organization

Cited by 4 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Majority opinion diffusion: when tie-breaking rule matters;Autonomous Agents and Multi-Agent Systems;2024-05-20

2. Biased opinion dynamics: when the devil is in the details;Information Sciences;2022-05

3. Phase transition of the 2-Choices dynamics on core–periphery networks;Distributed Computing;2021-05-26

4. Phase Transitions of the k-Majority Dynamics in a Biased Communication Model;International Conference on Distributed Computing and Networking 2021;2021-01-05

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