SelfRewardRAG: Enhancing Medical Reasoning with Retrieval-Augmented Generation and Self-Evaluation in Large Language Models
Zakaria Hammane, Fatima-Ezzahraa Ben-Bouazza, Abdelhadi Fennan
Abstract
In this study, we present a pioneering approach known as Retrieval Augmented Generation (RAG), which integrates Large Language Models (LLMs) with dynamic data retrieval to surmount the challenge of knowledge obsolescence, a matter of particular significance in the healthcare domain. This innovative system leverages real-time access to up-to-date clinical records, thereby enabling the generation of precise and informed responses, a notable leap over the conventional limitations faced by LLMs due to their reliance on static datasets. Our methodology embodies the seamless integration of RAG with LLMs to adeptly retrieve pertinent medical information from continuously updated repositories, such as PubMed, and to synthesize this information into accurate responses for medical queries. This advancement marks a considerable enhancement in the application of AI within medical decision-making processes, ensuring that the information provided remains both current and relevant. The effectiveness of our approach is validated through a series of experiments, which demonstrate a significant improvement in the accuracy and timeliness of the AI-generated responses, thereby underscoring its transformative potential for medical AI applications. Furthermore, the foundational principles underlying our system indicate its broader applicability in various other fields confronted with the challenges of rapidly changing knowledge bases. Through this work, we not only address the critical need for real-time information integration in healthcare AI but also establish a paradigm for future AI systems, promoting the incorporation of continuous learning and updating mechanisms to enhance their efficacy and relevance.