A Review of Retrieval-Augmented Generation for University-Specific Chatbot Systems

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Syed Irfan Ali
Hasan Laheri
Sanchit Bhajikhaye
M. Huzaifa Ansari
M. Huzaif Ansari
M. Bilal Khan

Abstract

The rapid advancement of Artificial Intelligence (AI) and Natural Language Processing (NLP) has made Large Language Models (LLMs) pivotal in educational question-answering systems, particularly for university admission chatbots [1]. However, LLMs face critical challenges such as generating hallucinations, relying on outdated knowledge, and having non-transparent reasoning processes [10]. To address this, Retrieval-Augmented Generation (RAG) has emerged as a promising solution, incorporating knowledge from external databases to enhance the accuracy and credibility of generated responses [10]. This paper reviews the architecture and application of RAG-powered chatbots (RAGBots) designed for specific university domains [1]. A key finding is that while RAG systems like URAG, SAMCares, and Infersity v1 demonstrate utility in providing intelligent access to university resources [1, 3, 4], datasets for such closed domains are still difficult to obtain and curate [2]. Furthermore, complex RAG implementations often involve high operational costs and specialized modules [1]. The work highlights enhancements like Multi-Query and Ensemble Retrieval [6] and discusses critical challenges such as Document-Level Retrieval Mismatch (DRM) [8], concluding with a vision for reliable, domain-specific RAGBots in higher education.

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How to Cite
Ali, S. I., Laheri, H., Bhajikhaye, S., Ansari, M. H., Ansari, M. H., & Khan, M. B. (2025). A Review of Retrieval-Augmented Generation for University-Specific Chatbot Systems. International Journal of Recent Advances in Engineering and Technology, 14(3s), 95–100. https://doi.org/10.65521/intjournalrecadvengtech.v14i3s.1676
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