It is shown that some economic phenomena cannot be studied through models based on the classic scheme of the agent with perfect rationality. They require the construction of models where the agents' bounded cognitive processes are explicitly represented. This goal can be reached through computational models based on a genetic algorithms and neural networks. The strength of this approach is shown through an oligopolistic model in which artificial agents with learning capacity, autonomously develop their price-setting procedures. The results of the simulations show that decision makers, endowed with limited cognitive resources, may evolve toward simple and robust decision rules using less information in more complex environments. Moreover they show how market-price can be strongly influenced by agents' cognitive processes.

Neural networks and genetic algorithms for the simulation models of bounded rationality theory - An application to oligopolistic markets

Baldassarre Gianluca
1997

Abstract

It is shown that some economic phenomena cannot be studied through models based on the classic scheme of the agent with perfect rationality. They require the construction of models where the agents' bounded cognitive processes are explicitly represented. This goal can be reached through computational models based on a genetic algorithms and neural networks. The strength of this approach is shown through an oligopolistic model in which artificial agents with learning capacity, autonomously develop their price-setting procedures. The results of the simulations show that decision makers, endowed with limited cognitive resources, may evolve toward simple and robust decision rules using less information in more complex environments. Moreover they show how market-price can be strongly influenced by agents' cognitive processes.
1997
Istituto di Scienze e Tecnologie della Cognizione - ISTC
Neural networks
genetic algorithms
oligopolistic markets
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/311432
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