Gana, BadyLeiva-Araos, AndresAllende-Cid, HéctorGarcía, José2024-09-112024-09-112024Gana, B.; Leiva-Araos, A.; Allende-Cid, H.; García, J. Leveraging LLMs for Efficient Topic Reviews. Appl. Sci. 2024, 14, 7675. https:// doi.org/10.3390/app14177675https://hdl.handle.net/11447/9298This paper presents the topic review (TR), a novel semi-automatic framework designed to enhance the efficiency and accuracy of literature reviews. By leveraging the capabilities of large language models (LLMs), TR addresses the inefficiencies and error-proneness of traditional review methods, especially in rapidly evolving fields. The framework significantly improves literature review processes by integrating advanced text mining and machine learning techniques. Through a case study approach, TR offers a step-by-step methodology that begins with query generation and refinement, followed by semi-automated text mining to identify relevant articles. LLMs are then employed to extract and categorize key themes and concepts, facilitating an in-depth literature analysis. This approach demonstrates the transformative potential of natural language processing in literature reviews. With an average similarity of 69.56% between generated and indexed keywords, TR effectively manages the growing volume of scientific publications, providing researchers with robust strategies for complex text synthesis and advancing knowledge in various domains. An expert analysis highlights a positive Fleiss’ Kappa score, underscoring the significance and interpretability of the results.22 p.enNLPLLMKnowledge managementTransformer-based topic modelsLeveraging LLMs for Efficient Topic ReviewsArticlehttps:// doi.org/10.3390/app14177675