Deep Reinforcement Learning : Emerging Trends in Macroeconomics and Future Prospects / Tohid Atashbar, Rui Aruhan Shi.

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Bibliographic Details
Online Access: Full Text (via IMF e-Library)
Main Author: Atashbar, Tohid
Other Authors: Aruhan Shi, Rui
Format: eBook
Language:English
Published: Washington, D.C. : International Monetary Fund, 2022.
Series:IMF working paper ; WP/2022/259.
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Description
Abstract:The application of Deep Reinforcement Learning (DRL) in economics has been an area of active research in recent years. A number of recent works have shown how deep reinforcement learning can be used to study a variety of economic problems, including optimal policy-making, game theory, and bounded rationality. In this paper, after a theoretical introduction to deep reinforcement learning and various DRL algorithms, we provide an overview of the literature on deep reinforcement learning in economics, with a focus on the main applications of deep reinforcement learning in macromodeling. Then, we analyze the potentials and limitations of deep reinforcement learning in macroeconomics and identify a number of issues that need to be addressed in order for deep reinforcement learning to be more widely used in macro modeling.
Physical Description:1 online resource (32 pages)
ISSN:1018-5941
Source of Description, Etc. Note:Description based on print version record.