ArXiv TLDR

AgentEconomist: An End-to-end Agentic System Translating Economic Intuitions into Executable Computational Experiments

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2604.27725

Jiaju Chen, Jinghua Piao, Xia Xu, Songwei Li, Tong Xia + 2 more

cs.HCcs.AI

TLDR

AgentEconomist is an agentic system that translates economic intuitions into executable computational experiments, improving research verification.

Key contributions

  • Translates economic intuitions into executable computational experiments.
  • Features a modular, multi-stage architecture for idea development, design, and execution.
  • Grounded in a knowledge base of over 13,000 academic economic papers.
  • Generates more novel and literature-grounded research ideas than generic LLMs.

Why it matters

This paper addresses the challenge of translating economic intuition into verifiable research. AgentEconomist streamlines the research process, allowing economists to focus on high-level ideas while delegating execution. This human-AI collaboration enhances the efficiency and quality of economic research.

Original Abstract

A long-standing challenge in economics lies not in the lack of intuition, but in the difficulty of translating intuitive insights into verifiable research. To address this challenge, we introduce AgentEconomist, an end-to-end interactive system designed to translate abstract intuitions into executable computational experiments. Grounded in a domain-specific knowledge base covering over 13,000 high-quality academic papers, the system employs a modular multi-stage architecture. Specifically, the Idea Development Stage generates literature-grounded hypotheses, the Experimental Design Stage configures simulator-aligned experimental parameters and protocols, and the Experimental Execution Stage runs experiments and returns structured analyses. Together, these stages form a human-in-the-loop, iterative workflow that translates economic intuitions into executable computational experiments. Through extensive experiments involving human expert evaluation and large language models (LLMs) as judges, we show that the system generates research ideas with stronger literature grounding and higher novelty and insight than state-of-the-art generic LLMs. Overall, AgentEconomist adopts a human-AI collaboration paradigm that enables researchers to focus on high-level intuitions, while delegating the labor-intensive processes of translation and computational execution to agents.

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