Contacto

Ver ítem 
  •   udiMundus Principal
  • Investigación
  • Artículos de revistas
  • Ver ítem
  •   udiMundus Principal
  • Investigación
  • Artículos de revistas
  • Ver ítem
  • Mi cuenta
JavaScript is disabled for your browser. Some features of this site may not work without it.

Listar

Todo udiMundusComunidades y ColeccionesAutoresTítulosMateriasTipos documentalesEsta colecciónAutoresTítulosMateriasTipos documentales

Mi cuenta

Acceder

Estadísticas

Estadísticas de uso

Sobre el repositorio

¿Qué es udiMundus?¿Qué puedo depositar?Guía de autoarchivoAcceso abierto​Preguntas Frecuentes

Social Biases in AI-Generated Creative Texts: A Mixed-Methods Approach in the Spanish Context

Ver/Abrir:
(1.258Mb)
Identificadores:
URI: http://hdl.handle.net/20.500.12226/2770
ISSN: 2076-0760
DOI: http://dx.doi.org/10.3390/socsci14030170
Exportar referencia:
Refworks
Compartir:
Estadísticas:
Ver estadísticas
Indice de impacto:
JCR: Q2
Metadatos
Mostrar el registro completo del ítem
Autor(es):
Gabino-Campos, María; Baile, Jose I.; Padilla-Martínez, Aura
Fecha de publicación:
2025-03-11
Resumen:

This study addresses the biases in artificial intelligence (AI) when generating creative content, a growing challenge due to the widespread adoption of these technologies in creating automated narratives. Biases in AI reflect and amplify social inequalities. They perpetuate stereotypes and limit diverse representation in the generated outputs. Through an experimental approach with ChatGPT-4, biases related to age, gender, sexual orientation, ethnicity, religion, physical appearance, and socio-economic status, are analyzed in AI-generated stories about successful individuals in the context of Spain. The results reveal an overrepresentation of young, heterosexual, and Hispanic characters, alongside a marked underrepresentation of diverse groups such as older individuals, ethnic minorities, and characters with varied socio-economic backgrounds. These findings validate the hypothesis that AI systems replicate and amplify the biases present in their training data. This process reinforces social inequalities. To mitigate these effects, the study suggests solutions such as diversifying training datasets and conducting regular ethical audits, with the aim of fostering more inclusive AI systems. These measures seek to ensure that AI technologies fairly represent human diversity and contribute to a more equitable society.

This study addresses the biases in artificial intelligence (AI) when generating creative content, a growing challenge due to the widespread adoption of these technologies in creating automated narratives. Biases in AI reflect and amplify social inequalities. They perpetuate stereotypes and limit diverse representation in the generated outputs. Through an experimental approach with ChatGPT-4, biases related to age, gender, sexual orientation, ethnicity, religion, physical appearance, and socio-economic status, are analyzed in AI-generated stories about successful individuals in the context of Spain. The results reveal an overrepresentation of young, heterosexual, and Hispanic characters, alongside a marked underrepresentation of diverse groups such as older individuals, ethnic minorities, and characters with varied socio-economic backgrounds. These findings validate the hypothesis that AI systems replicate and amplify the biases present in their training data. This process reinforces social inequalities. To mitigate these effects, the study suggests solutions such as diversifying training datasets and conducting regular ethical audits, with the aim of fostering more inclusive AI systems. These measures seek to ensure that AI technologies fairly represent human diversity and contribute to a more equitable society.

Palabra(s) clave:

algorithmic biases; AI ethics; AI narrative analysis; gender stereotypes; age biases; ethnic biases; social representation; training datasets; physical appearance; socio-economic status

Colecciones a las que pertenece:
  • Artículos de revistas [1304]
Creative Commons El contenido de este sitio está bajo una licencia Creative Commons Reconocimiento – No Comercial – Sin Obra Derivada (by-nc-nd), salvo que se indique lo contrario
Logo Udima

Universidad a Distancia de Madrid

Biblioteca Hipatia

  • Facebook Udima
  • Twitter Udima
  • Youtube Udima
  • LinkedIn Udima
  • Pinterest Udima
  • Google+ Udima
  • beQbe Udima
  • Instagram Udima

www.udima.es - repositorio@udima.es

Logo DSpace