
[332] - Inteligencia Artificial y Ciencia Abierta: un análisis bibliométrico de la producción científica reciente RESÚMEN Objetivo: Mapear y analizar la literatura científica sobre la intersección entre Inteligencia Artificial y Ciencia Abierta, identificando temas, redes de colaboración y bases intelectuales que configuran el campo. Metodología: Estudio bibliométrico cuantitativo utilizando datos de la plataforma OpenAlex (agosto de 2025), con 447 artículos de acceso abierto, analizados vía VOSviewer, enfocándose en las estructuras conceptual (coocurrencia de palabras clave), intelectual (cocitación y acoplamiento bibliográfico) y social (coautoría). Resultados: El campo crece exponencialmente desde 2023, con un núcleo en "computer science", "artificial intelligence" y "data science", expandiéndose a salud, medio ambiente y bioinformática. La evolución temporal apunta a discusiones éticas y de gobernanza ("scientific publishing", "research integrity"). La producción y colaboración están dominadas por el Norte Global. Discusión: Aunque técnico-computacional, el campo se centra en las implicaciones de la IA en la práctica científica y la integridad. El predominio anglófono y la concentración de la investigación en el Norte Global plantean cuestiones sobre diversidad e inclusión, pilares de los principios de la Ciencia Abierta. Conclusiones: La investigación en la intersección de Inteligencia Artificial y Ciencia Abierta es multifacética y está en crecimiento, impulsada por una robusta colaboración internacional. Son necesarias políticas e incentivos para fomentar prácticas abiertas, promoviendo un ecosistema científico más transparente, colaborativo, justo y equitativo, y abordando la necesidad de una mayor equidad global en la investigación.
[332] - Artificial Intelligence and Open Science: A Bibliometric Analysis of Recent Scientific Production ABSTRACT Objective: To map and analyze the scientific literature on the intersection between Artificial Intelligence and Open Science, identifying themes, collaboration networks, and intellectual foundations that shape the field. Methodology: A quantitative bibliometric study using data from the OpenAlex platform (August 2025), comprising 447 open-access articles. The analysis was conducted via VOSviewer, focusing on conceptual (keyword co-occurrence), intellectual (co-citation and bibliographic coupling), and social (co-authorship) structures. Results: The field has grown exponentially since 2023, with a core in "computer science," "artificial intelligence," and "data science," expanding into health, environment, and bioinformatics. The temporal evolution indicates a maturation towards ethical and governance discussions ("scientific publishing," "research integrity"). Production and collaboration are dominated by the Global North. Discussion: Although technically and computationally driven, the field focuses on the implications of AI for scientific practice and integrity. The Anglophone predominance and the concentration of research in the Global North raise questions about diversity and inclusion, which are fundamental pillars of Open Science principles. Conclusions: Research at the intersection of Artificial Intelligence and Open Science is multifaceted and growing, driven by robust international collaboration. Policies and incentives are needed to foster open practices, promoting a more transparent, collaborative, fair, and equitable scientific ecosystem, and addressing the need for greater global equity in research.
FOS: Computer and information sciences, Artificial intelligence, Computer and information sciences, FAIR principles, Ciência da Informação, Inteligência Artificial, Princípios FAIR, Open science, Ciência de dados, Ciência aberta, Information Science, Data science
FOS: Computer and information sciences, Artificial intelligence, Computer and information sciences, FAIR principles, Ciência da Informação, Inteligência Artificial, Princípios FAIR, Open science, Ciência de dados, Ciência aberta, Information Science, Data science
| selected citations These citations are derived from selected sources. This is an alternative to the "Influence" indicator, which also reflects the overall/total impact of an article in the research community at large, based on the underlying citation network (diachronically). | 0 | |
| popularity This indicator reflects the "current" impact/attention (the "hype") of an article in the research community at large, based on the underlying citation network. | Average | |
| influence This indicator reflects the overall/total impact of an article in the research community at large, based on the underlying citation network (diachronically). | Average | |
| impulse This indicator reflects the initial momentum of an article directly after its publication, based on the underlying citation network. | Average |
