Latest Research Papers
2025-01-23
arXiv
A RAG-Based Institutional Assistant
This paper introduces a RAG-based virtual assistant for the University of São Paulo, which integrates relevant document fragments to improve LLM performance. The system's accuracy significantly increases when provided with correct document chunks, highlighting the importance of database access and the limitations of current semantic search methods.
Although large language models (LLMs) demonstrate strong text generation
capabilities, they struggle in scenarios requiring access to structured
knowledge bases or specific documents, limiting their effectiveness in
knowledge-intensive tasks. To address this limitation, retrieval-augmented
generation (RAG) models have been developed, enabling generative models to
incorporate relevant document fragments into their inputs. In this paper, we
design and evaluate a RAG-based virtual assistant specifically tailored for the
University of S\~ao Paulo. Our system architecture comprises two key modules: a
retriever and a generative model. We experiment with different types of models
for both components, adjusting hyperparameters such as chunk size and the
number of retrieved documents. Our optimal retriever model achieves a Top-5
accuracy of 30%, while our most effective generative model scores 22.04\%
against ground truth answers. Notably, when the correct document chunks are
supplied to the LLMs, accuracy significantly improves to 54.02%, an increase of
over 30 percentage points. Conversely, without contextual input, performance
declines to 13.68%. These findings highlight the critical role of database
access in enhancing LLM performance. They also reveal the limitations of
current semantic search methods in accurately identifying relevant documents
and underscore the ongoing challenges LLMs face in generating precise
responses.