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Computing Markov perfect Nash equilibria: numerical implications of a dynamic differentiated product model

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  • Paul McGuire
  • Ariel Pakes
Abstract
In this article we develop and illustrate a simple algorithm for computing Markov-perfect Nash equilibria. The advantage of the Markov-perfect framework is that it is flexible enough to reproduce important aspects of reality in a variety of market settings. As a result, we hope that our article and (perhaps improved) versions of the associated algorithms will eventually be a part of a tool kit that allows researchers to go back and forth between the implications of economic theory and the characteristics of alternative datasets.
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Suggested Citation

  • Paul McGuire & Ariel Pakes, 1992. "Computing Markov perfect Nash equilibria: numerical implications of a dynamic differentiated product model," Discussion Paper / Institute for Empirical Macroeconomics 58, Federal Reserve Bank of Minneapolis.
  • Handle: RePEc:fip:fedmem:58
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    References listed on IDEAS

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