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Optimal Collective Decision-Making through Social Influence and Different Action Execution Times

Marco Montes De Oca Roldan, Eliseo Ferrante, Nithin Mathews, Mauro Birattari, Marco Dorigo

发表年份
2009
引用次数
2

摘要

In nature, there are examples of large groups of animals that are capable of making optimal collective-level decisions without the need for global control or information. Understanding the underlying mechanisms of such decentralized decision-making processes may help us to design artificial systems that exhibit some of the desirable properties, like scalability or fault tolerance, that are usually observed in these natural systems. In this paper, we show how a simple social influence mechanism, based on the binary particle swarm optimization algorithm, can make a whole population of agents achieve consensus on one of two possible choices in a completely decentralized way. Furthermore, we show that, if the conditions for achieving consensus are met and each choice is bound to an action that takes time to perform, the population converges to the choice associated with the shortest execution time. We illustrate the applicability of the decision-making mechanism presented in this paper on an example scenario in swarm robotics.

关键词

Computer scienceScalabilityPopulationAction (physics)Swarm roboticsArtificial intelligenceGroup decision-makingDistributed computingMechanism (biology)Simple (philosophy)

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