The Impact of Generative AI on Student Churn and the Future of Formal Education
Stephen Elbourn

TL;DR
This paper investigates how Generative AI influences student decisions to skip traditional university education in favor of entrepreneurial pursuits, analyzing social media data to forecast future educational trends and challenges.
Contribution
It introduces a comprehensive social media analysis methodology to understand AI's impact on education, entrepreneurship, and policy perceptions, offering new insights into future educational paradigms.
Findings
Generative AI fosters increased entrepreneurial ambitions among students.
Public sentiment shows growing acceptance of AI in education.
Traditional education models are being challenged by AI-driven personalized learning.
Abstract
In the contemporary educational landscape, the advent of Generative Artificial Intelligence (AI) presents unprecedented opportunities for personalised learning, fundamentally challenging the traditional paradigms of education. This research explores the emerging trend where high school students, empowered by tailored educational experiences provided by Generative AI, opt to forgo traditional university degrees to pursue entrepreneurial ventures at a younger age. To understand and predict the future of education in the age of Generative AI, we employ a comprehensive methodology to analyse social media data. Our approach includes sentiment analysis to gauge public opinion, topic modelling to identify key themes and emerging trends, and user demographic analysis to understand the engagement of different age groups and regions. We also perform influencer analysis to identify key figures…
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Taxonomy
TopicsImpact of AI and Big Data on Business and Society
MethodsOPT
