Decoding Knowledge Claims: The Evaluation of Scientific Publication Contributions through Semantic Analysis
Identificadores
URI: https://hdl.handle.net/10481/94579Metadatos
Mostrar el registro completo del ítemMateria
Hirsch H-Index Citation analysis Scientific publications Scientometrics RWMD
Fecha
2024-08-31Referencia bibliográfica
D'Aniello, L., Robinson-Garcia, N., Aria, M., & Cuccurullo, C. (2024). Decoding Knowledge Claims: The Evaluation of Scientific Publication Contributions through Semantic Analysis. arXiv preprint arXiv:2407.18646.
Patrocinador
This research has been financed by the following research projects: PRIN-2022 ”SCIKHEALTH” (Project Code: 2022825Y5E; CUP: E53D2300611006); PRIN-2022 PNRR ”The value of scientific production for patient care in Academic Health Science Centres” (Project Code: P2022RF38Y; CUP: E53D23016650001).Resumen
The surge in scientific publications challenges the use of publication counts as a measure of scientific progress,
requiring alternative metrics that emphasize the quality and novelty of scientific contributions rather than sheer
quantity. This paper proposes the use of Relaxed Word Mover’s Distance (RWMD), a semantic text similarity
measure, to evaluate the novelty of scientific papers. We hypothesize that RWMD can more effectively gauge the
growth of scientific knowledge. To test such an assumption, we apply RWMD to evaluate seminal papers, with
Hirsch's H-Index paper as a primary case study. We compare RWMD results across three groups: 1) H-Indexrelated
papers, 2) scientometric studies, and 3) unrelated papers, aiming to discern redundant literature and hype
from genuine innovations. Findings suggest that emphasizing knowledge claims offers a deeper insight into
scientific contributions, marking RWMD as a promising alternative method to traditional citation metrics, thus
better tracking significant scientific breakthroughs.