Deep Reinforcement Learning: Emerging Trends in Macroeconomics and Future Prospects
Tohid Atashbar, Rui Aruhan Shi
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
Year of publication: |
2022
|
---|---|
Authors: | Atashbar, Tohid |
Other Persons: | Aruhan Shi, Rui (contributor) |
Publisher: |
Washington, D.C : International Monetary Fund |
Saved in:
freely available
Saved in favorites
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