The Ethics of Artificial Intelligence in Education: Threat or Opportunity?

Authors

DOI:

https://doi.org/10.15359/ree.28-S.20541

Keywords:

SWOT, ethics, artificial intelligence, students, university, SDG 4, Quality education, technology training

Abstract

Background. In the current era of technological advances, the development of artificial intelligence has experienced a significant surge in its development and application in the last two years. AI is used to create virtual personas with realistic voices and facial expressions, generate automatic text, and more. Its contributions to human life are undeniable, but where are the limits of its use established? Is its use ethical? Aim. This study aims to analyze the ethical boundaries of artificial intelligence use in academic and educational contexts. Method. To do this, a mixed approach is used. First, a systematic review of scientific literature on artificial intelligence was conducted using the Web of Science database. Subsequently, a qualitative SWOT analysis was employed to analyze and discuss the findings. Results. As a result, it is important to note that the use of artificial intelligence for generating texts is a valuable and beneficial tool for the study and use of languages, as it allows for the creation of speeches in other languages almost instantly. However, weaknesses were also identified, such as the risk of plagiarism in educational, academic, and university environments. Conclusions. Therefore, establishing ethical standards and limits on the use of AI is a fundamental basis for supporting its utilization.

Author Biographies

Lionel Sánchez-Bolívar, Universidad Isabel I

Doctor en Ciencias de la Educación por la Universidad de Granada. Diplomado en Trabajo Social por la Universidad de Granada. Miembro del grupo de investigación HUM238 La formación del profesor como mediador del conocimiento. Profesor en la Universidad Isabel I.

Sergio Escalante-González, University of Granada

Licenciado en Filología Hispánica por la Universidad de Granada. Máster en Estudios Superiores de Lengua Española. Doctorando en el Programa de Doctorado en Ciencias de la Educación. Desde 2020, ejerce como profesor de Lengua Castellana y Literatura en un instituto público de Ceuta.

Asunción Martínez-Martínez , University of Granada

Profesora Titular de la Universidad de Granada del Departamento de Métodos de Investigación y Diagnóstico en Educación. Doctora en Ciencias de la Educación por la Universidad de Granada 2013. Pertenece al grupo de investigación HUM- 983 Investigación en la transformación de los contextos y aprendizajes, de la Junta de Andalucía. 

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Published

2024-12-21

How to Cite

The Ethics of Artificial Intelligence in Education: Threat or Opportunity? (L. Sánchez-Bolívar, S. Escalante-González, & A. Martínez-Martínez , Trans.). (2024). Revista Electrónica Educare, 28(S), 1-20. https://doi.org/10.15359/ree.28-S.20541

How to Cite

The Ethics of Artificial Intelligence in Education: Threat or Opportunity? (L. Sánchez-Bolívar, S. Escalante-González, & A. Martínez-Martínez , Trans.). (2024). Revista Electrónica Educare, 28(S), 1-20. https://doi.org/10.15359/ree.28-S.20541

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