Timely and accurate analysis of population-level data is crucial for effective decision-making during public health emergencies such as the COVID-19 pandemic. However, the massive input of semi-structured data, including structured demographic information and unstructured human feedback, poses significant challenges to conventional analysis methods. Manual expert-driven assessments, though accurate, are inefficient, while standard NLP pipelines often require large task-specific labeled datasets and struggle with generalization across diverse domains. To address these challenges, we propose a novel graph-based reasoning framework that integrates large language models with structured demographic attributes and unstructured public feedback in a weakly supervised pipeline. The proposed approach dynamically models evolving citizen needs into a need-aware graph, enabling population-specific analyses based on key features such as age, gender, and the Index of Multiple Deprivation. It generates interpretable insights to inform responsive health policy decision-making. We test our method using a real-world dataset, and preliminary experimental results demonstrate its feasibility. This approach offers a scalable solution for intelligent population health monitoring in resource-constrained clinical and governmental settings.
@article{arxiv.2510.05196,
title = {Graph-based LLM over Semi-Structured Population Data for Dynamic Policy Response},
author = {Daqian Shi and Xiaolei Diao and Jinge Wu and Honghan Wu and Xiongfeng Tang and Felix Naughton and Paulina Bondaronek},
journal= {arXiv preprint arXiv:2510.05196},
year = {2025}
}
Comments
Accepted by Efficient Medical AI 2025 Workshop, MICCAI 2025