Année
2026
Auteurs
WATTIAU Isabelle, Akoka Jacky, du Mouza Cédric
Abstract
Dive into a pioneering approach that leverages large language models to revolutionize how research articles are analyzed and synthesized. The chapter introduces a method to automatically generate ‘paths of knowledge contributions’—structured representations that map out the artifacts and their relationships within a paper, such as concepts, frameworks, or implemented systems. By fine-tuning LLMs on annotated datasets of information systems research, the authors demonstrate how these models can extract and organize key contributions from abstracts and introductions with remarkable precision. The study evaluates four leading LLMs—ChatGPT, Grok, Claude, and Gemini—revealing distinct strategies in path generation, from Grok’s concise, core-focused outputs to ChatGPT’s detailed, multi-node structures. With a focus on reproducibility and structural rigor, this method not only simplifies literature reviews but also enables richer comparisons across research corpora. Discover how this automated approach could transform your workflow, saving time while ensuring transparency and depth in academic analysis.
AKOKA, J., WATTIAU, I. et DU MOUZA, C. (2026). Automated Extraction of Conceptual Representations from Research Articles Using Large Language Models. Dans: Francesca Zerbato, Jelena Zdravkovic, Luise Pufahl, Geert Poels, Marite Kirikova eds. Intelligent Information Systems. 1 ed. Cham: Springer Nature Switzerland, pp. 11-19.