Research Article

An Experimental Framework for Student Course Recommendation Using Large Language Models

Volume: 1 Number: 1 May 31, 2025
EN TR

An Experimental Framework for Student Course Recommendation Using Large Language Models

Abstract

This study presents a novel approach to student course recommendation by leveraging Large Language Models (LLMs), specifically ChatGPT, as an intelligent assistant in academic advising. Traditional recommendation systems in educational settings often rely on fixed rules or collaborative filtering techniques, which may fail to capture the nuanced goals and interests of individual students. In contrast, LLMs can interpret natural language inputs, allowing for more personalized and context-aware suggestions. Within this framework, we simulate student profiles based on academic history, interests, and career goals, and evaluate the quality of course recommendations generated by the model. Preliminary results show that LLMs can provide coherent, relevant, and goal-aligned suggestions without the need for extensive training data or domain-specific tuning. This work highlights the potential of using general-purpose language models to support student advisory services, especially in institutions where counselor resources are limited. The proposed framework can serve as a foundation for future AI-integrated educational support systems.

Keywords

References

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Details

Primary Language

English

Subjects

Natural Language Processing

Journal Section

Research Article

Early Pub Date

May 30, 2025

Publication Date

May 31, 2025

Submission Date

April 13, 2025

Acceptance Date

May 6, 2025

Published in Issue

Year 2025 Volume: 1 Number: 1

APA
Doğan, A. (2025). An Experimental Framework for Student Course Recommendation Using Large Language Models. Innovative Artificial Intelligence, 1(1), 21-28. https://izlik.org/JA28BT56TH
AMA
1.Doğan A. An Experimental Framework for Student Course Recommendation Using Large Language Models. INNAI. 2025;1(1):21-28. https://izlik.org/JA28BT56TH
Chicago
Doğan, Alican. 2025. “An Experimental Framework for Student Course Recommendation Using Large Language Models”. Innovative Artificial Intelligence 1 (1): 21-28. https://izlik.org/JA28BT56TH.
EndNote
Doğan A (May 1, 2025) An Experimental Framework for Student Course Recommendation Using Large Language Models. Innovative Artificial Intelligence 1 1 21–28.
IEEE
[1]A. Doğan, “An Experimental Framework for Student Course Recommendation Using Large Language Models”, INNAI, vol. 1, no. 1, pp. 21–28, May 2025, [Online]. Available: https://izlik.org/JA28BT56TH
ISNAD
Doğan, Alican. “An Experimental Framework for Student Course Recommendation Using Large Language Models”. Innovative Artificial Intelligence 1/1 (May 1, 2025): 21-28. https://izlik.org/JA28BT56TH.
JAMA
1.Doğan A. An Experimental Framework for Student Course Recommendation Using Large Language Models. INNAI. 2025;1:21–28.
MLA
Doğan, Alican. “An Experimental Framework for Student Course Recommendation Using Large Language Models”. Innovative Artificial Intelligence, vol. 1, no. 1, May 2025, pp. 21-28, https://izlik.org/JA28BT56TH.
Vancouver
1.Alican Doğan. An Experimental Framework for Student Course Recommendation Using Large Language Models. INNAI [Internet]. 2025 May 1;1(1):21-8. Available from: https://izlik.org/JA28BT56TH