TL;DR
This paper introduces the AI Economist framework, combining reinforcement learning and data-driven simulations to design interpretable, robust policies for complex socioeconomic issues, demonstrated through pandemic-related policy optimization.
Contribution
It presents a novel AI-driven framework that enables flexible, interpretable, and robust policy design considering strategic behavior and real-world calibration challenges.
Findings
RL-trained policies improve social welfare outcomes
Policies respond effectively to key health and economic indicators
Framework demonstrates robustness to calibration errors
Abstract
Optimizing economic and public policy is critical to address socioeconomic issues and trade-offs, e.g., improving equality, productivity, or wellness, and poses a complex mechanism design problem. A policy designer needs to consider multiple objectives, policy levers, and behavioral responses from strategic actors who optimize for their individual objectives. Moreover, real-world policies should be explainable and robust to simulation-to-reality gaps, e.g., due to calibration issues. Existing approaches are often limited to a narrow set of policy levers or objectives that are hard to measure, do not yield explicit optimal policies, or do not consider strategic behavior, for example. Hence, it remains challenging to optimize policy in real-world scenarios. Here we show that the AI Economist framework enables effective, flexible, and interpretable policy design using two-level…
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