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Reimagining Urban Science: Scaling Causal Inference with Large Language Models

Reimagining Urban Science: Scaling Causal Inference with Large Language Models

来源:Arxiv_logoArxiv
英文摘要

Urban causal research is essential for understanding the complex dynamics of cities and informing evidence-based policies. However, it is challenged by the inefficiency and bias of hypothesis generation, barriers to multimodal data complexity, and the methodological fragility of causal experimentation. Recent advances in large language models (LLMs) present an opportunity to rethink how urban causal analysis is conducted. This Perspective examines current urban causal research by analyzing taxonomies that categorize research topics, data sources, and methodological approaches to identify structural gaps. We then introduce an LLM-driven conceptual framework, AutoUrbanCI, composed of four distinct modular agents responsible for hypothesis generation, data engineering, experiment design and execution, and results interpretation with policy recommendations. We propose evaluation criteria for rigor and transparency and reflect on implications for human-AI collaboration, equity, and accountability. We call for a new research agenda that embraces AI-augmented workflows not as replacements for human expertise but as tools to broaden participation, improve reproducibility, and unlock more inclusive forms of urban causal reasoning.

Yutong Xia、Ao Qu、Yunhan Zheng、Yihong Tang、Dingyi Zhuang、Yuxuan Liang、Cathy Wu、Roger Zimmermann、Jinhua Zhao

计算技术、计算机技术

Yutong Xia,Ao Qu,Yunhan Zheng,Yihong Tang,Dingyi Zhuang,Yuxuan Liang,Cathy Wu,Roger Zimmermann,Jinhua Zhao.Reimagining Urban Science: Scaling Causal Inference with Large Language Models[EB/OL].(2025-04-15)[2025-04-28].https://arxiv.org/abs/2504.12345.点此复制

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