Structural Reinforcement Learning for Heterogeneous Agent Macroeconomics
By: Yucheng Yang , Chiyuan Wang , Andreas Schaab and more
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 problems traditional methods struggle with, in particular 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.
Similar Papers
From Individual Learning to Market Equilibrium: Correcting Structural and Parametric Biases in RL Simulations of Economic Models
General Economics
Teaches computers to make fair economic choices.
The Trouble with Rational Expectations in Heterogeneous Agent Models: A Challenge for Macroeconomics
General Economics
Helps computers make better guesses about money.
Heterogeneous RBCs via deep multi-agent reinforcement learning
Multiagent Systems
Helps computers understand how many different people act.