Date
Publisher
arXiv
Academic choice is crucial in U.S. undergraduate education, allowing students
significant freedom in course selection. However, navigating the complex
academic environment is challenging due to limited information, guidance, and
an overwhelming number of choices, compounded by time restrictions and the high
demand for popular courses. Although career counselors exist, their numbers are
insufficient, and course recommendation systems, though personalized, often
lack insight into student perceptions and explanations to assess course
relevance. In this paper, a deep learning-based concept extraction model is
developed to efficiently extract relevant concepts from course descriptions to
improve the recommendation process. Using this model, the study examines the
effects of skill-based explanations within a serendipitous recommendation
framework, tested through the AskOski system at the University of California,
Berkeley. The findings indicate that these explanations not only increase user
interest, particularly in courses with high unexpectedness, but also bolster
decision-making confidence. This underscores the importance of integrating
skill-related data and explanations into educational recommendation systems.
What is the application?
Who is the user?
Who age?
Why use AI?
Study design
