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Main Authors: Liu, Jing, Ren, Xinxing, Xu, Yanmeng, Guo, Zekun
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2505.11401
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author Liu, Jing
Ren, Xinxing
Xu, Yanmeng
Guo, Zekun
author_facet Liu, Jing
Ren, Xinxing
Xu, Yanmeng
Guo, Zekun
contents This study proposes and implements the first LLM agents based agentic pipeline for multi task public opinion analysis. Unlike traditional methods, it offers an end-to-end, fully automated analytical workflow without requiring domain specific training data, manual annotation, or local deployment. The pipeline integrates advanced LLM capabilities into a low-cost, user-friendly framework suitable for resource constrained environments. It enables timely, integrated public opinion analysis through a single natural language query, making it accessible to non-expert users. To validate its effectiveness, the pipeline was applied to a real world case study of the 2025 U.S. China tariff dispute, where it analyzed 1,572 Weibo posts and generated a structured, multi part analytical report. The results demonstrate some relationships between public opinion and governmental decision-making. These contributions represent a novel advancement in applying generative AI to public governance, bridging the gap between technical sophistication and practical usability in public opinion monitoring.
format Preprint
id arxiv_https___arxiv_org_abs_2505_11401
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Can AI automatically analyze public opinion? A LLM agents-based agentic pipeline for timely public opinion analysis
Liu, Jing
Ren, Xinxing
Xu, Yanmeng
Guo, Zekun
Computers and Society
This study proposes and implements the first LLM agents based agentic pipeline for multi task public opinion analysis. Unlike traditional methods, it offers an end-to-end, fully automated analytical workflow without requiring domain specific training data, manual annotation, or local deployment. The pipeline integrates advanced LLM capabilities into a low-cost, user-friendly framework suitable for resource constrained environments. It enables timely, integrated public opinion analysis through a single natural language query, making it accessible to non-expert users. To validate its effectiveness, the pipeline was applied to a real world case study of the 2025 U.S. China tariff dispute, where it analyzed 1,572 Weibo posts and generated a structured, multi part analytical report. The results demonstrate some relationships between public opinion and governmental decision-making. These contributions represent a novel advancement in applying generative AI to public governance, bridging the gap between technical sophistication and practical usability in public opinion monitoring.
title Can AI automatically analyze public opinion? A LLM agents-based agentic pipeline for timely public opinion analysis
topic Computers and Society
url https://arxiv.org/abs/2505.11401