How Large Language Model Empowers the Analysis of Online Public Engagement for Mega Infrastructure Projects: cases in Hong Kong

Abstract
Mega infrastructure projects (MIPs) have profound societal impacts, and public engagement plays a crucial role in their success. The rise of social media enables the dynamic analysis of public opinions, aiding decision-makers in addressing public concerns. This study introduces an NPRM (Networking, Parsing, Retrieval, and Mapping) approach that innovatively leverages large language models (LLMs) for massive text parsing and social network analysis. Using data from Hong Kongβs nine MIP topics, this study identifies influencers and examines public and influencer engagement across project lifecycles. The findings and constructed managerial maps reveal the hidden dynamics of involvement and interaction across different project event types, enabling a prioritized management method. The novel LLM-driven framework offers decision-makers actionable insights to comprehensively optimize online public communication and engagement strategies for MIPs.
Type
Publication
IEEE Transactions on Engineering Management(IEEE-TEM)
This journal paper is accepted by IEEE-TEM on March 15, 2025.