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Main Authors: Yoo, Sangbong, Seo, Seongbum, Yoon, Chanyoung, Lee, Hyelim, Kim, Jeong-Nam, Kim, Chansoo, Jang, Yun, Fujiwara, Takanori
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2509.03164
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author Yoo, Sangbong
Seo, Seongbum
Yoon, Chanyoung
Lee, Hyelim
Kim, Jeong-Nam
Kim, Chansoo
Jang, Yun
Fujiwara, Takanori
author_facet Yoo, Sangbong
Seo, Seongbum
Yoon, Chanyoung
Lee, Hyelim
Kim, Jeong-Nam
Kim, Chansoo
Jang, Yun
Fujiwara, Takanori
contents Analysis of public opinions collected from digital media helps organizations maintain positive relationships with the public. Such public relations (PR) analysis often involves assessing opinions, for example, measuring how strongly people trust an organization. Pre-trained Large Language Models (LLMs) hold great promise for supporting Organization-Public Relationship Assessment (OPRA) because they can map unstructured public text to OPRA dimensions and articulate rationales through prompting. However, adapting LLMs for PR analysis typically requires fine-tuning on large labeled datasets, which is both labor-intensive and knowledge-intensive, making it difficult for PR researchers to apply these models. In this paper, we present OPRA-Vis, a visual analytics system that leverages LLMs for OPRA without requiring extensive labeled data. Our framework employs Chain-of-Thought prompting to guide LLMs in analyzing public opinion data by incorporating PR expertise directly into the reasoning process. Furthermore, OPRA-Vis provides visualizations that reveal the clues and reasoning paths used by LLMs, enabling users to explore, critique, and refine model decisions. We demonstrate the effectiveness of OPRA-Vis through two real-world use cases and evaluate it quantitatively, through comparisons with alternative LLMs and prompting strategies, and qualitatively, through assessments of usability, effectiveness, and expert feedback.
format Preprint
id arxiv_https___arxiv_org_abs_2509_03164
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle OPRA-Vis: Visual Analytics System to Assist Organization-Public Relationship Assessment with Large Language Models
Yoo, Sangbong
Seo, Seongbum
Yoon, Chanyoung
Lee, Hyelim
Kim, Jeong-Nam
Kim, Chansoo
Jang, Yun
Fujiwara, Takanori
Human-Computer Interaction
Analysis of public opinions collected from digital media helps organizations maintain positive relationships with the public. Such public relations (PR) analysis often involves assessing opinions, for example, measuring how strongly people trust an organization. Pre-trained Large Language Models (LLMs) hold great promise for supporting Organization-Public Relationship Assessment (OPRA) because they can map unstructured public text to OPRA dimensions and articulate rationales through prompting. However, adapting LLMs for PR analysis typically requires fine-tuning on large labeled datasets, which is both labor-intensive and knowledge-intensive, making it difficult for PR researchers to apply these models. In this paper, we present OPRA-Vis, a visual analytics system that leverages LLMs for OPRA without requiring extensive labeled data. Our framework employs Chain-of-Thought prompting to guide LLMs in analyzing public opinion data by incorporating PR expertise directly into the reasoning process. Furthermore, OPRA-Vis provides visualizations that reveal the clues and reasoning paths used by LLMs, enabling users to explore, critique, and refine model decisions. We demonstrate the effectiveness of OPRA-Vis through two real-world use cases and evaluate it quantitatively, through comparisons with alternative LLMs and prompting strategies, and qualitatively, through assessments of usability, effectiveness, and expert feedback.
title OPRA-Vis: Visual Analytics System to Assist Organization-Public Relationship Assessment with Large Language Models
topic Human-Computer Interaction
url https://arxiv.org/abs/2509.03164