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An Attempt to Integrate Path-Dependency in a Learning Model

In: Artificial Economics

Author

Listed:
  • Narine Udumyan

    (GREQAM)

  • Juliette Rouchier

    (GREQAM)

  • Dominique Ami

    (IDEP DESMID)

Abstract

The absence of information on the state of the resource is considered as one of the main reasons of resource collapses. In the current study, we propose a solution to this problem stemming from the resource users. They can perceive the resource dynamics by the impact it has on their profits. At a given time step, the state of the resource depends on its previous states and hence on the agents’ past decisions. In this perspective, different perceptions are characterized by different weights that the resource users assign to the current and past actions in the profit formation. In order to capture these individual differences, we consider Schaefer-Gordon dynamic model. On its basis, we develop a learning model, adapted from Roth-Erev model. The simulation results show that the resource can be exploited in a sustainable manner if the past action is taken into account.

Suggested Citation

  • Narine Udumyan & Juliette Rouchier & Dominique Ami, 2009. "An Attempt to Integrate Path-Dependency in a Learning Model," Lecture Notes in Economics and Mathematical Systems, in: Cesáreo Hernández & Marta Posada & Adolfo López-Paredes (ed.), Artificial Economics, chapter 0, pages 223-234, Springer.
  • Handle: RePEc:spr:lnechp:978-3-642-02956-1_18
    DOI: 10.1007/978-3-642-02956-1_18
    as

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