Simulating the Economic Impact of Rationality through Reinforcement Learning and Agent-Based Modelling
Simone Brusatin, Tommaso Padoan, Andrea Coletta, Domenico Delli Gatti,, Aldo Glielmo

TL;DR
This paper introduces a novel agent-based macroeconomic model using reinforcement learning to simulate fully rational agents, revealing how rationality influences market strategies, power dynamics, and overall economic stability.
Contribution
It extends traditional ABMs with RL agents, enabling the study of rational behavior and strategic interactions in macroeconomic simulations.
Findings
RL agents learn distinct profit-maximizing strategies
Market segregation emerges among independent RL agents
Higher rationality increases total output but may raise instability
Abstract
Agent-based models (ABMs) are simulation models used in economics to overcome some of the limitations of traditional frameworks based on general equilibrium assumptions. However, agents within an ABM follow predetermined 'bounded rational' behavioural rules which can be cumbersome to design and difficult to justify. Here we leverage multi-agent reinforcement learning (RL) to expand the capabilities of ABMs with the introduction of 'fully rational' agents that learn their policy by interacting with the environment and maximising a reward function. Specifically, we propose a 'Rational macro ABM' (R-MABM) framework by extending a paradigmatic macro ABM from the economic literature. We show that gradually substituting ABM firms in the model with RL agents, trained to maximise profits, allows for studying the impact of rationality on the economy. We find that RL agents spontaneously learn…
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Taxonomy
TopicsComplex Systems and Time Series Analysis · Economic theories and models · Innovation Diffusion and Forecasting
