Reasoning Like an Economist: Post-Training on Economic Problems Induces Strategic Generalization in LLMs
Reasoning Like an Economist: Post-Training on Economic Problems Induces Strategic Generalization in LLMs
Directly training Large Language Models (LLMs) for Multi-Agent Systems (MAS) remains challenging due to intricate reward modeling, dynamic agent interactions, and demanding generalization requirements. This paper explores whether post-training techniques, specifically Supervised Fine-Tuning (SFT) and Reinforcement Learning with Verifiable Rewards (RLVR), can effectively $\textit{generalize}$ to multi-agent scenarios. We use economic reasoning as a testbed, leveraging its strong foundations in mathematics and game theory, its demand for structured analytical reasoning, and its relevance to real-world applications such as market design, resource allocation, and policy analysis. We introduce $\textbf{Recon}$ ($\textbf{R}$easoning like an $\textbf{ECON}$omist), a 7B-parameter open-source LLM post-trained on a hand-curated dataset of 2,100 high-quality economic reasoning problems. Comprehensive evaluation on economic reasoning benchmarks and multi-agent games reveals clear improvements in structured reasoning and economic rationality. These results underscore the promise of domain-aligned post-training for enhancing reasoning and agent alignment, shedding light on the roles of SFT and RL in shaping model behavior. Code is available at https://github.com/MasterZhou1/Recon .
Yufa Zhou、Shaobo Wang、Xingyu Dong、Xiangqi Jin、Yifang Chen、Yue Min、Kexin Yang、Xingzhang Ren、Dayiheng Liu、Linfeng Zhang
经济学数学计算技术、计算机技术
Yufa Zhou,Shaobo Wang,Xingyu Dong,Xiangqi Jin,Yifang Chen,Yue Min,Kexin Yang,Xingzhang Ren,Dayiheng Liu,Linfeng Zhang.Reasoning Like an Economist: Post-Training on Economic Problems Induces Strategic Generalization in LLMs[EB/OL].(2025-05-31)[2025-07-01].https://arxiv.org/abs/2506.00577.点此复制
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