A Multi-Agent Model for Opinion Evolution under Cognitive Biases
Abstract
We generalize the DeGroot model for opinion dynamics to better capture realistic social scenarios. We introduce a model where each agent has their own individual cognitive biases. Society is represented as a directed graph whose edges indicate how much agents influence one another. Biases are represented as the functions in the square region and categorized into four sub-regions based on the potential reactions they may elicit in an agent during instances of opinion disagreement. Under the assumption that each bias of every agent is a continuous function within the region of receptive but resistant reactions (), we show that the society converges to a consensus if the graph is strongly connected. Under the same assumption, we also establish that the entire society converges to a unanimous opinion if and only if the source components of the graph-namely, strongly connected components with no external influence-converge to that opinion. We illustrate that convergence is not guaranteed for strongly connected graphs when biases are either discontinuous functions in or not included in . We showcase our model through a series of examples and simulations, offering insights into how opinions form in social networks under cognitive biases.
Cite
@article{arxiv.2402.17615,
title = {A Multi-Agent Model for Opinion Evolution under Cognitive Biases},
author = {Mário S. Alvim and Artur Gaspar da Silva and Sophia Knight and Frank Valencia},
journal= {arXiv preprint arXiv:2402.17615},
year = {2024}
}