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Culture and Education
Cultura y Educación
Volume 35, 2023 - Issue 4
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RESEARCH PAPER / ARTÍCULO DE INVESTIGACIÓN

Support for decision-making in checking the level of quality of student research works based on automated text analysis (Asistencia para la toma de decisiones en la evaluación de la calidad de las investigaciones de los estudiantes basada en el análisis automático de textos)

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Pages 1068-1102 | Received 08 Aug 2022, Accepted 19 Dec 2022, Published online: 27 Nov 2023

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