Influencia de la motivación hacia el aprendizaje y la procrastinación en la dependencia a ChatGPT

Autores/as

DOI:

https://doi.org/10.5944/ried.45497

Palabras clave:

motivación, dependencia, ChatGPT, procrastinación, inteligencia artificial, educación superior

Resumen

En poco tiempo, las inteligencias artificiales generativas como ChatGPT se han convertido en herramientas de apoyo para el aprendizaje, transformando la forma en que muchos estudiantes afrontan las tareas académicas. Su inmediatez y accesibilidad las hacen especialmente atractivas frente a los recursos tradicionales, hasta el punto de que algunos estudiantes pueden desarrollar cierta dependencia a ellas. Este trabajo investiga el impacto de la motivación hacia el aprendizaje y la procrastinación en la dependencia a ChatGPT. 467 estudiantes universitarios del área de la Educación participaron completando una serie de escalas validadas para evaluar diferentes tipos de motivación definidas en la Teoría de la Autodeterminación (motivación extrínseca, intrínseca y amotivación), procrastinación y dependencia a ChatGPT. Los análisis de mediación mostraron que los estudiantes con menor motivación intrínseca (β = -.076; LI = -.121; LS = -.037) y mayor amotivación (β = .090; LI = .041; LS = .144) tendían a procrastinar con mayor frecuencia, siendo la procrastinación un factor clave que aumentaba la dependencia a ChatGPT. Además, el alumnado con alta motivación extrínseca (incluso sin la mediación de la procrastinación) resultó ser más propenso a desarrollar una mayor dependencia a ChatGPT (β = .122; p = .022). Estos hallazgos destacan la importancia de implementar estrategias que fomenten la motivación intrínseca y la autorregulación, ayudando a los estudiantes a utilizar adecuadamente las herramientas basadas en la IA generativa mientras desarrollan competencias esenciales que podrían estar en riesgo por el uso excesivo de estas herramientas, como el pensamiento crítico y la resolución de problemas.

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Biografía del autor/a

Héctor Galindo-Domínguez, Universidad del País Vasco, UPV/EHU (España)

Doctor Cum Laude en Educación (Deusto), con másteres en Innovación Educativa (UNED) y en Acoso Escolar (San Jorge), y grado en Educación Primaria (UPV/EHU). Profesor ayudante doctor en la UPV/EHU, investigador en metodologías y tecnologías educativas, bienestar y pensamiento crítico, y con experiencia como docente de Primaria.

Martín Sainz-de-la-Maza, Universidad del País Vasco, UPV/EHU (España)

Graduado en Psicología y doctor en la UPV/EHU, con másteres en Psicología Social y en Ciencias Sociales. Docente en Psicología Evolutiva y de la Educación (UPV/EHU) y colaborador en proyectos de investigación sobre prácticas de riesgo. Ha presentado trabajos en congresos nacionales e internacionales de educación y ciencias sociales.

Lucía Campo, Universidad del País Vasco, UPV/EHU (España)

Doctora en Educación (Deusto), Licenciada en Psicología y Psicopedagogía, y Máster en Innovación y Competencias. Profesora ayudante doctor en la UPV/EHU, con experiencia como docente universitaria, asesora en planificación educativa y PT. Investiga sobre competencias docentes, pensamiento crítico, evaluación y uso de tecnologías en educación.

Daniel Losada-Iglesias, Universidad del País Vasco, UPV/EHU (España)

Doctor en Psicodidáctica, Licenciado en Psicopedagogía y Maestro en Primaria. Profesor Titular en la UPV/EHU, especialista en Tecnología Educativa y Formación del Profesorado. Autor de más de 50 publicaciones, con 3 quinquenios docentes, 2 sexenios de investigación, experiencia directiva y miembro del Consejo de Redacción de la Revista Latinoamericana de Tecnología Educativa.

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Publicado

2026-01-02

Cómo citar

Galindo-Domínguez, H., Sainz-de-la-Maza, M., Campo, L., & Losada-Iglesias, D. (2026). Influencia de la motivación hacia el aprendizaje y la procrastinación en la dependencia a ChatGPT. RIED-Revista Iberoamericana de Educación a Distancia, 29(1), 217–240. https://doi.org/10.5944/ried.45497