Human Resources AnalyticsA systematic Review from a Sustainable Management Approach
- Álvarez-Gutiérrez, Francisco J. 1
- Stone, Dianna L. 2
- Castaño, Ana M. 3
- García-Izquierdo, Antonio L. 3
- 1 University of Santiago de Compostela, Spain
- 2 University of New Mexico, USA
- 3 University of Oviedo, Spain
ISSN: 1576-5962
Datum der Publikation: 2022
Ausgabe: 38
Nummer: 3
Seiten: 129-147
Art: Artikel
Andere Publikationen in: Revista de psicología del trabajo y de las organizaciones = Journal of work and organizational psychology
Zusammenfassung
La analítica de recursos humanos (ARH) atrae cada vez más atención en los últimos años y será crucial para el desarrollo del ámbito de los recursos humanos. No obstante, la literatura sobre el tema parece ser más promocional que descriptiva. Para comprobar esto, llevamos a cabo una revisión sistemática de la literatura y un análisis de contenido con los siguientes objetivos: primero, abordar el estado actual la ARH y segundo, proponer un marco para el desarrollo de la AHR como una práctica sostenible. Analizamos 79 artículos de investigación incluidos en las más prestigiosas bases de datos y encontramos 34 estudios empíricos para su posterior análisis de contenido. Los principales resultados reflejan la relativa novedad del campo de la ARH, estando centrados la mayoría de los artículos en los aspectos financieros. No obstante, también se observa la creciente importancia dada a la ética. Finalmente, proponemos un marco para el desarrollo de una ARH basada en la triple cuenta de resultados (económica, social y medioambiental, y se discuten las implicaciones prácticas y teóricas de nuestros hallazgos.
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