Date
Publisher
arXiv
This study explores how college students interact with generative AI
(ChatGPT-4) during educational quizzes, focusing on reliance and predictors of
AI adoption. Conducted at the early stages of ChatGPT implementation, when
students had limited familiarity with the tool, this field study analyzed 315
student-AI conversations during a brief, quiz-based scenario across various
STEM courses. A novel four-stage reliance taxonomy was introduced to capture
students' reliance patterns, distinguishing AI competence, relevance, adoption,
and students' final answer correctness. Three findings emerged. First, students
exhibited overall low reliance on AI and many of them could not effectively use
AI for learning. Second, negative reliance patterns often persisted across
interactions, highlighting students' difficulty in effectively shifting
strategies after unsuccessful initial experiences. Third, certain behavioral
metrics strongly predicted AI reliance, highlighting potential behavioral
mechanisms to explain AI adoption. The study's findings underline critical
implications for ethical AI integration in education and the broader field. It
emphasizes the need for enhanced onboarding processes to improve student's
familiarity and effective use of AI tools. Furthermore, AI interfaces should be
designed with reliance-calibration mechanisms to enhance appropriate reliance.
Ultimately, this research advances understanding of AI reliance dynamics,
providing foundational insights for ethically sound and cognitively enriching
AI practices.
What is the application?
Who is the user?
Who age?
Why use AI?
Study design
