GTAILGGNJan 3, 2022

Analyzing Micro-Founded General Equilibrium Models with Many Agents using Deep Reinforcement Learning

arXiv:2201.01163v29 citations
Originality Incremental advance
AI Analysis

This provides a more flexible computational method for macroeconomic analysis without unrealistic assumptions, though it is incremental as it builds on existing MARL techniques.

The paper tackles the challenge of finding general equilibria in microfounded dynamic general equilibrium models with many heterogeneous agents by using deep multi-agent reinforcement learning with structured learning curricula, achieving stable convergence to meaningful ε-meta-equilibria in real-business-cycle models with up to 100 agents.

Real economies can be modeled as a sequential imperfect-information game with many heterogeneous agents, such as consumers, firms, and governments. Dynamic general equilibrium (DGE) models are often used for macroeconomic analysis in this setting. However, finding general equilibria is challenging using existing theoretical or computational methods, especially when using microfoundations to model individual agents. Here, we show how to use deep multi-agent reinforcement learning (MARL) to find $ε$-meta-equilibria over agent types in microfounded DGE models. Whereas standard MARL fails to learn non-trivial solutions, our structured learning curricula enable stable convergence to meaningful solutions. Conceptually, our approach is more flexible and does not need unrealistic assumptions, e.g., continuous market clearing, that are commonly used for analytical tractability. Furthermore, our end-to-end GPU implementation enables fast real-time convergence with a large number of RL economic agents. We showcase our approach in open and closed real-business-cycle (RBC) models with 100 worker-consumers, 10 firms, and a social planner who taxes and redistributes. We validate the learned solutions are $ε$-meta-equilibria through best-response analyses, show that they align with economic intuitions, and show our approach can learn a spectrum of qualitatively distinct $ε$-meta-equilibria in open RBC models. As such, we show that hardware-accelerated MARL is a promising framework for modeling the complexity of economies based on microfoundations.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes