Can AI Master Econometrics? Evidence from Econometrics AI Agent on Expert-Level Tasks
Jun 1, 2025·




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Qiang Chen
Tianyang Han
Jin Li
Ye Luo
Yuxiao Wu
Xiaowei Zhang
Tuo Zhou

Abstract
Can AI effectively perform complex econometric analysis traditionally requiring human expertise? This paper evaluates AI agents’ capability to master econometrics, focusing on empirical analysis performance. We develop an “Econometrics AI Agent” built on the open-source MetaGPT framework. This agent exhibits outstanding performance in: (1) planning econometric tasks strategically, (2) generating and executing code, (3) employing error-based reflection for improved robustness, and (4) allowing iterative refinement through multi-round conversations. We construct two datasets from academic coursework materials and published research papers to evaluate performance against real-world challenges. Comparative testing shows our domain-specialized AI agent significantly outperforms both benchmark large language models (LLMs) and general-purpose AI agents. This work establishes a testbed for exploring AI’s impact on social science research and enables cost-effective integration of domain expertise, making advanced econometric methods accessible to users with minimal coding skills. Furthermore, our AI agent enhances research reproducibility and offers promising pedagogical applications for econometrics teaching.
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Authors
Zhang Yonghong Professor in Economics and Strategy, Director of the Centre for AI, Management and Organization (CAMO), and Area Head of Management and Strategy at HKU Business School.

Authors
Asociate Professor in Economics and Finance, Associate Director of the Institute of Digital Economy and Innovation at HKU Business School.


Authors
I am an Associate Professor at HKUST, jointly appointed in the Department of Industrial Engineering and Decision Analytics and the Department of Economics, and the Academic Director of the MSc in FinTech program. I serve as an Associate Editor for several leading journals in the field, including Management Science, Operations Research, Navel Research Logistics, and Queueing Systems.
Authors