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Structural Reinforcement Learning for Heterogeneous Agent Macroeconomics

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  • Yang, Yucheng
  • Wang, Chiyuan
  • Schaab, Andreas
  • Moll, Benjamin

Abstract

We present a new approach to formulating and solving heterogeneous agent models with aggregate risk. We replace the cross-sectional distribution with low-dimensional prices as state variables and let agents learn equilibrium price dynamics directly from simulated paths. To do so, we introduce a "structural reinforcement learning" (SRL) method which treats prices via simulation while exploiting agents’ structural knowledge of their own individual dynamics. Our SRL method yields a general and highly efficient global solution method for heterogeneous agent models that sidesteps the Master equation and handles models traditional methods struggle with, like those with nontrivial market-clearing conditions. We illustrate the approach in the Krusell-Smith model, the Huggett model with aggregate shocks, and a HANK model with a forward-looking Phillips curve, all of which we solve globally within minutes.

Suggested Citation

  • Yang, Yucheng & Wang, Chiyuan & Schaab, Andreas & Moll, Benjamin, 2025. "Structural Reinforcement Learning for Heterogeneous Agent Macroeconomics," CEPR Discussion Papers 20980, C.E.P.R. Discussion Papers.
  • Handle: RePEc:cpr:ceprdp:20980
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    JEL classification:

    • E00 - Macroeconomics and Monetary Economics - - General - - - General

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