Using synchronous Boolean networks to model several phenomena of collective behavior
Stepan Kochemazov, Alexander Semenov

TL;DR
This paper models collective behavior in multi-agent systems using synchronous Boolean networks, analyzing how to influence the system's state through strategic placement of instigators and loyalists, with practical solutions via SAT solvers.
Contribution
It introduces a novel Boolean network model for collective behavior and formulates influence problems as SAT instances, providing theoretical insights and computational methods.
Findings
Successfully modeled collective behavior with Boolean networks.
Reduced influence problems to SAT and solved with modern SAT solvers.
Provided theoretical results on conforming and anticonforming agent dynamics.
Abstract
In this paper, we propose an approach for modeling and analysis of a number of phenomena of collective behavior. By collectives we mean multi-agent systems that transition from one state to another at discrete moments of time. The behavior of a member of a collective (agent) is called conforming if the opinion of this agent at current time moment conforms to the opinion of some other agents at the previous time moment. We presume that at each moment of time every agent makes a decision by choosing from the set {0,1} (where 1-decision corresponds to action and 0-decision corresponds to inaction). In our approach we model collective behavior with synchronous Boolean networks. We presume that in a network there can be agents that act at every moment of time. Such agents are called instigators. Also there can be agents that never act. Such agents are called loyalists. Agents that are…
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