Deep Reinforcement Learning in a Monetary Model

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Date

19 avril 2021

Type de document
Périmètre
Identifiant
  • 2104.09368
Collection

arXiv

Organisation

Cornell University



Sujets proches En

Pattern Model

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Mingli Chen et al., « Deep Reinforcement Learning in a Monetary Model », arXiv - économie


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We propose using deep reinforcement learning to solve dynamic stochastic general equilibrium models. Agents are represented by deep artificial neural networks and learn to solve their dynamic optimisation problem by interacting with the model environment, of which they have no a priori knowledge. Deep reinforcement learning offers a flexible yet principled way to model bounded rationality within this general class of models. We apply our proposed approach to a classical model from the adaptive learning literature in macroeconomics which looks at the interaction of monetary and fiscal policy. We find that, contrary to adaptive learning, the artificially intelligent household can solve the model in all policy regimes.

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