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Bounded-Confidence Models of Opinion Dynamics with Neighborhood Effects (2402.05368v2)

Published 8 Feb 2024 in physics.soc-ph, cs.SI, math.DS, nlin.AO, and physics.data-an

Abstract: We generalize bounded-confidence models (BCMs) of opinion dynamics by incorporating neighborhood effects. In a BCM, interacting agents influence each other through dyadic influence if their opinions are sufficiently similar to each other. In our "neighborhood BCMs" (NBCMs), interacting agents are influenced both by each other's opinions and by the opinions of the agents in each other's neighborhoods. Our NBCMs thus include both the usual dyadic influence between agents and a "transitive influence", which encodes the influence of an agent's neighbors, when determining whether or not an interaction changes the opinions of agents. In this transitive influence, an individual's opinion is influenced by a neighbor when, on average, the opinions of the neighbor's neighbors are sufficiently similar to its own opinion. We formulate both neighborhood Deffuant--Weisbuch (NDW) and neighborhood Hegselmann--Krause (NHK) BCMs. We build further on our NBCMs by introducing a neighborhood-based network adaptation in which a network coevolves with agent opinions by changing its structure through "transitive homophily". In this network evolution, an agent breaks a tie to one of its neighbors and then rewires that tie to a new agent, with a preference for agents with a mean neighbor opinion that is closer to its own opinion. Using numerical simulations on a variety of types of networks, we explore how the qualitative opinion dynamics and network properties of our adaptive NDW model change as we adjust the relative proportions of dyadic and transitive influence. In our numerical experiments, we find that incorporating neighborhood effects into the opinion dynamics and the network-adaptation rewiring strategy tends to reduce the spectral gap and degree assortativity of networks. (This is a shortened version of the paper's abstract.)

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References (58)
  1. Birds of a feather: Homophily in social networks. Annual Review of Sociology, 27(1):415–444, 2001.
  2. Michael A Milburn. Persuasion and Politics: The Social Psychology of Public Opinion. Thomson Brooks/Cole Publishing Company, Pacific Grove, CA, USA, 1991.
  3. Effect of disinformation propagation on opinion dynamics: A game theoretic approach. IEEE Transactions on Network Science and Engineering, 9(5):3775–3790, 2022.
  4. Trisha T. C. Lin. Online opinions, sentiments and news framing of the first nuclear referendum in Taiwan: A mix-method approach. Asian Journal of Communication, 32(2):152–173, 2022.
  5. Cognitive–motivational mechanisms of political polarization in social-communicative contexts. Nature Reviews Psychology, 1(10):560–576, 2022.
  6. Opinion dynamics: A multidisciplinary review and perspective on future research. International Journal of Knowledge and Systems Science (IJKSS), 2(4):72–91, 2011.
  7. From classical to modern opinion dynamics. International Journal of Modern Physics C, 31(07):2050101, 2020.
  8. Sidney Redner. Reality-inspired voter models: A mini-review. Comptes Rendus Physique, 20:275–292, 2019.
  9. John R. P. French Jr. A formal theory of social power. Psychological Review, 63(3):181–194, 1956.
  10. Morris H. DeGroot. Reaching a consensus. Journal of the American Statistical Association, 69(345):118–121, 1974.
  11. Social influence and opinions. Journal of Mathematical Sociology, 15(3–4):193–206, 1990.
  12. Jan Lorenz. Continuous opinion dynamics under bounded confidence: A survey. International Journal of Modern Physics C, 18(12):1819–1838, 2007.
  13. Bounded confidence opinion dynamics: A survey. Automatica, 159, 2024.
  14. Modeling echo chambers and polarization dynamics in social networks. Physical Review Letters, 124(4):048301, 2020.
  15. Opinion dynamics and bounded confidence: Models, analysis and simulation. Journal of Artificial Societies and Social Simulation, 5(3):2, 2002.
  16. Meet, discuss, and segregate! Complexity, 7(3):55–63, 2002.
  17. Bounded confidence opinion dynamics with opinion leaders and environmental noises. Computers & Operations Research, 74:205–213, 2016.
  18. Ye Tian and Long Wang. Opinion dynamics in social networks with stubborn agents: An issue-based perspective. Automatica, 96:213–223, 2018.
  19. Pawel Sobkowicz. Extremism without extremists: Deffuant model with emotions. Frontiers in Physics, 3:17, 2015.
  20. Emergence of polarization in a sigmoidal bounded-confidence model of opinion dynamics. SIAM Journal on Applied Dynamical Systems, 2023. In press (arXiv:2209.07004).
  21. Markus Brede. How does active participation affect consensus: Adaptive network model of opinion dynamics and influence maximizing rewiring. Complexity, 2019:1486909, 2019.
  22. An adaptive bounded-confidence model of opinion dynamics on networks. Journal of Complex Networks, 11(1):cnac055, 2023.
  23. A bounded-confidence model of opinion dynamics on hypergraphs. SIAM Journal on Applied Dynamical Systems, 21(1):1–32, 2022.
  24. Higher order interactions destroy phase transitions in deffuant opinion dynamics model. Communications Physics, 5(1):32, 2022.
  25. Opinion formation and distribution in a bounded-confidence model on various networks. Physical Review E, 97(2):022312, 2 2018.
  26. Trust transitivity in complex social networks. In Proceedings of the AAAI Conference on Artificial Intelligence, volume 25, pages 1222–1229, 2011.
  27. Connected: The Surprising Power of our Social Networks and How They Shape our Lives. Little, Brown Spark, New York City, NY, USA, 2009.
  28. Social contagion theory: Examining dynamc social networks and human behavior. Statistics in Medicine, 32(4):556–577, 2013.
  29. The anatomy of the Facebook social graph. arXiv:1111.4503, 2011.
  30. Think locally, act locally: Detection of small, medium-sized, and large communities in large networks. Physical Review E, 91(1):012821, 2015.
  31. A two-step communication opinion dynamics model with self-persistence and influence index for social networks based on the DeGroot model. Information Sciences, 519:363–381, 2020.
  32. Adaptive dynamical networks. Physics Reports, 1031:1–59, 2023.
  33. Petter Holme and Mark E. J. Newman. Nonequilibrium phase transition in the coevolution of networks and opinions. Physical Review E, 74(5):056108, 2006.
  34. Graph fission in an evolving voter model. Proceedings of the National Academy of Sciences of the United States of America, 109(10):3682–3687, 2012.
  35. Modeling confirmation bias and polarization. Scientific Reports, 7(1):40391, 2017.
  36. Consensus formation on adaptive networks. Physical Review E, 77(1):016102, 2008.
  37. Bounded confidence under preferential flip: A coupled dynamics of structural balance and opinions. PloS ONE, 11(10):e0164323, 2016.
  38. A review and agenda for integrated disease models including social and behavioural factors. Nature Human Behaviour, 5:834–846, 2021.
  39. Modelling the influence of human behaviour on the spread of infectious diseases: A review. Journal of the Royal Society Interface, 7(50):1247–1256, 2010.
  40. Coupling infectious diseases, human preventive behavior, and networks — A conceptual framework for epidemic modeling. Social Science & Medicine, 74(2):167–175, 2012.
  41. Towards a characterization of behavior-disease models. PloS One, 6(8):e23084, 2011.
  42. Coupled disease–behavior dynamics on complex networks: A review. Physics of Life Reviews, 15:1–29, 2015.
  43. Spatial early warning signals of social and epidemiological tipping points in a coupled behaviour-disease network. Scientific Reports, 10(1):7611, 2020.
  44. A multilayer network model of the coevolution of the spread of a disease and competing opinions. Mathematical Models and Methods in Applied Sciences, 31(12):2455–2494, 2021.
  45. Understanding the coevolution of mask wearing and epidemics: A network perspective. Proceedings of the National Academy of Sciences of the United States of America, 119(26):e2123355119, 2022.
  46. Multilayer networks. Journal of Complex Networks, 2(3):203–271, 2014.
  47. Mathematics of Epidemics on Networks: From Exact to Approximate Models. Springer International Publishing, Cham, Switzerland, 2017.
  48. Jan Lorenz. A stabilization theorem for dynamics of continuous opinions. Physica A: Statistical Mechanics and its Applications, 355(1):217–223, 2005.
  49. A bounded-confidence model of opinion dynamics with heterogeneous node-activity levels. Physical Review Research, 5(2):023179, 2023.
  50. Node i𝑖iitalic_i’s opinion contributes to this mean.
  51. Structural balance and opinion separation in trust–mistrust social networks. IEEE Transactions on Control of Network Systems, 3(1):46–56, 2015.
  52. Opinion dynamics and minimum adjustment-driven consensus model for multi-criteria large-scale group decision making under a novel social trust propagation mechanism. IEEE Transactions on Fuzzy Systems, 31(1):307–321, 2022.
  53. Random walks and diffusion on networks. Physics Reports, 716:1–58, 2017.
  54. Fan Chung. Random walks and local cuts in graphs. Linear Algebra and Its Applications, 423(1):22–32, 2007.
  55. Mark E. J. Newman. Networks. Oxford University Press, Oxford, UK, second edition, 2018.
  56. Epidemic processes in complex networks. Reviews of Modern Physics, 87:925–979, 2015.
  57. Networks of necessity: Simulating COVID-19 mitigation strategies for disabled people and their caregivers. PLoS Computational Biology, 18(5):e1010042, 2022.
  58. Multivalley structure in Kauffman’s model: Analogy with spin glasses. Journal of Physics A: Mathematical and General, 19(16):L1003, 1986.

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