Opinion Dynamics Model Based on Cognitive Biases of Complex Agents
Authored by Pawel Sobkowicz
Date Published: 2018
DOI: 10.18564/jasss.3867
Sponsors:
No sponsors listed
Platforms:
Fortran
Model Documentation:
Other Narrative
Model Code URLs:
https://osf.io/7xasr/
Abstract
We present an introduction to a novel way of simulating individual and
group opinion dynamics, taking into account how various sources of
information are filtered due to cognitive biases. The agent-based model
presented here falls into the `complex agent' category, in which the
agents are described in considerably greater detail than in the simplest
`spinson' model. To describe agents' information processing, we
introduced mechanisms of updating individual belief distributions,
relying on information processing. The open nature of this proposed
model allows us to study the effects of various static and
time-dependent biases and information filters. In particular, the paper
compares the effects of two important psychological mechanisms:
confirmation bias and politically motivated reasoning. This comparison
has been prompted by recent experimental psychology work by Dan Kahan.
Depending on the effectiveness of information filtering (agent bias),
agents confronted with an objective information source can either reach
a consensus based on truth, or remain divided despite the evidence. In
general, this model might provide understanding into increasingly
polarized modern societies, especially as it allows us to mix different
types of filters: e.g., psychological, social, and algorithmic.
Tags
Agent-based model
Contagion
Participation
information
opinion change
Vaccination
Phase-transitions
Persistence
Sznajd
model
Judgment
Political polarization
Motivated reasoning
Confirmation bias
Complex agents
Negative emotions