The Unattractiveness of Indeterminate Dynamic Equilibria

Julian Ashwin, Paul Beaudry, Martin Ellison

Research output: Working paper / PreprintWorking paper

Abstract

Macroeconomic forces that generate multiple equilibria often support locally-indeterminate dynamic equilibria in which a continuum of perfect foresight paths converge towards the same steady state. The set of rational expectations equilibria (REE) in such environments can be very large, although the relevance of many of them has been questioned on the basis that they may not be learnable. In this paper we document the existence of a learnable REE in such situations. However, we show that the dynamics of this learnable REE do not resemble perturbations around any of the convergent perfect foresight paths. Instead, the learnable REE treats the locally-indeterminate steady state as unstable, in contrast to it resembling a stable attractor under perfect foresight.
Original languageEnglish
PublisherCenter for Economic Policy Research (CEPR)
Number of pages28
VolumeDP16822
Publication statusPublished - Feb 2022
Externally publishedYes

Publication series

SeriesCEPR Discussion Papers
NumberDP16822

Keywords

  • Indeterminacy
  • Machine learning
  • multiple equilibria
  • neural networks

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