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Introducing the Argumentation Framework Within Agent-Based Models to Better Simulate Agents' Cognition in Opinion Dynamics: Application to Vegetarian Diet Diffusion

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Abstract

This paper introduces a generic agent-based model simulating the exchange and the diffusion of pro and con arguments. It is applied to the case of the diffusion of vegetarian diets in the context of a potential emergence of a second nutrition transition. To this day, agent-based simulation has been extensively used to study opinion dynamics. However, the vast majority of existing models have been limited to extremely abstract and simplified representations of the diffusion process. These simplifications impairs the realism of the simulations and disables the understanding of the reasons for the shift of an actor's opinion. The generic model presented here explicitly represents exchanges of arguments between actors in the context of an opinion dynamic model. In particular, the inner attitude towards an opinion of each agent is formalized as an argumentation graph and each agent can share arguments with other agents. Simulation experiments show that introducing attacks between arguments and a limitation of the number of arguments mobilized by agents has a strong impact on the evolution of the agents' opinion. We also highlight that when a new argument is introduced into the system, the quantity and the profile of the agents receiving the new argument will impact the evolution of the overall opinion. Finally, the application of this model to vegetarian diet adoption seems consistent with historical food behaviour dynamics observed during crises.

Suggested Citation

  • Patrick Taillandier & Nicolas Salliou & Rallou Thomopoulos, 2021. "Introducing the Argumentation Framework Within Agent-Based Models to Better Simulate Agents' Cognition in Opinion Dynamics: Application to Vegetarian Diet Diffusion," Journal of Artificial Societies and Social Simulation, Journal of Artificial Societies and Social Simulation, vol. 24(2), pages 1-6.
  • Handle: RePEc:jas:jasssj:2020-35-3
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    File URL: https://www.jasss.org/24/2/6/6.pdf
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    Cited by:

    1. Romy Lynn Chaib & Catherine Macombe & Rallou Thomopoulos, 2022. "Adapting a participatory modelling method to forecast food system scenarios: a case study on the pork value-chain," Economia agro-alimentare, FrancoAngeli Editore, vol. 24(3), pages 1-37.
    2. Chaib, Romy Lynn & Macombe, Catherine & Thomopoulos, Rallou, 2022. "Adapting a participatory modelling method to forecast food system scenarios: a case study on the pork value-chain," Economia agro-alimentare / Food Economy, Italian Society of Agri-food Economics/Società Italiana di Economia Agro-Alimentare (SIEA), vol. 24(3), December.

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