Una visión general de la brecha de género en la región de Europa

Autores/as

  • Mary Luz Mouronte López Engineering and Women in ICT from Humanism Group, Pozuelo de Alarcon, Madrid / Universidad Francisco de Vitoria, España

DOI:

https://doi.org/10.37467/revhuman.v11.4124

Palabras clave:

Gender gap, Europe, Woman, Education, Violence, Discrimination in the family, Political representation

Resumen

El estudio de la brecha de género ha despertado el interés de los organismos internacionales y de los investigadores. Este trabajo obtiene una visión general de la situación de la mujer en Europa. La investigación se realiza partiendo de variables de genero disponibles en repositorios internacionales y utilizando técnicas de análisis de datos. De modo general, la situación en Europa es positiva. Si bien, es necesario acometer mejoras en algunos países en ámbitos como el empresarial, el jurídico, y el político. También las mujeres de algunas naciones se beneficiarían de medidas para corregir la discriminación en el ámbito familiar.

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Publicado

2022-12-20

Cómo citar

Mouronte López, M. L. (2022). Una visión general de la brecha de género en la región de Europa. HUMAN REVIEW. International Humanities Review / Revista Internacional De Humanidades, 14(3), 1–13. https://doi.org/10.37467/revhuman.v11.4124

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Sección

Artículos de investigación (monográfico)