Date
Publisher
arXiv
Generative AI (GAI) technologies are quickly reshaping the educational
landscape. As adoption accelerates, understanding how students and educators
perceive these tools is essential. This study presents one of the most
comprehensive analyses to date of stakeholder discourse dynamics on GAI in
education using social media data. Our dataset includes 1,199 Reddit posts and
13,959 corresponding top-level comments. We apply sentiment analysis, topic
modeling, and author classification. To support this, we propose and validate a
modular framework that leverages prompt-based large language models (LLMs) for
analysis of online social discourse, and we evaluate this framework against
classical natural language processing (NLP) models. Our GPT-4o pipeline
consistently outperforms prior approaches across all tasks. For example, it
achieved 90.6% accuracy in sentiment analysis against gold-standard human
annotations. Topic extraction uncovered 12 latent topics in the public
discourse with varying sentiment and author distributions. Teachers and
students convey optimism about GAI's potential for personalized learning and
productivity in higher education. However, key differences emerged: students
often voice distress over false accusations of cheating by AI detectors, while
teachers generally express concern about job security, academic integrity, and
institutional pressures to adopt GAI tools. These contrasting perspectives
highlight the tension between innovation and oversight in GAI-enabled learning
environments. Our findings suggest a need for clearer institutional policies,
more transparent GAI integration practices, and support mechanisms for both
educators and students. More broadly, this study demonstrates the potential of
LLM-based frameworks for modeling stakeholder discourse within online
communities.
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