Systematic bibliometric review of artificial intelligence in human resource development: insights for HRD researchers, practitioners and policymakers

PurposeArtificial intelligence (AI) is a significant game changer in human resource development (HRD). The launch of ChatGPT has accelerated its progress and amplified its impact on organizations and employees. This study aims to review and examine literature on AI in HRD, using a bibliometric appro...

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Published in:EUROPEAN JOURNAL OF TRAINING AND DEVELOPMENT
Main Authors: Hamouche, Salima; Rofa, Norffadhillah; Parent-Lamarche, Annick
Format: Review; Early Access
Language:English
Published: EMERALD GROUP PUBLISHING LTD 2023
Subjects:
Online Access:https://www-webofscience-com.uitm.idm.oclc.org/wos/woscc/full-record/WOS:001129375400001
author Hamouche
Salima; Rofa
Norffadhillah; Parent-Lamarche
Annick
spellingShingle Hamouche
Salima; Rofa
Norffadhillah; Parent-Lamarche
Annick
Systematic bibliometric review of artificial intelligence in human resource development: insights for HRD researchers, practitioners and policymakers
Business & Economics
author_facet Hamouche
Salima; Rofa
Norffadhillah; Parent-Lamarche
Annick
author_sort Hamouche
spelling Hamouche, Salima; Rofa, Norffadhillah; Parent-Lamarche, Annick
Systematic bibliometric review of artificial intelligence in human resource development: insights for HRD researchers, practitioners and policymakers
EUROPEAN JOURNAL OF TRAINING AND DEVELOPMENT
English
Review; Early Access
PurposeArtificial intelligence (AI) is a significant game changer in human resource development (HRD). The launch of ChatGPT has accelerated its progress and amplified its impact on organizations and employees. This study aims to review and examine literature on AI in HRD, using a bibliometric approach.Design/methodology/approachThis study is a bibliometric review. Scopus was used to identify studies in the field. In total, 236 papers published in the past 10 years were examined using the VOSviewer program.FindingsThe obtained results showed that most cited documents and authors are mainly from computer sciences, emphasizing machine learning over human learning. While it was expected that HRD authors and studies would have a more substantial presence, the lesser prominence suggests several interesting avenues for explorations.Practical implicationsThis study provides insights and recommendations for researchers, managers, HRD practitioners and policymakers. Prioritizing the development of both humans and machines becomes crucial, as an exclusive focus on machines may pose a risk to the sustainability of employees' skills and long-term career prospects.Originality/valueThere is a dearth of bibliometric studies examining AI in HRD. Hence, this study proposes a relatively unexplored approach to examine this topic. It provides a visual and structured overview of this topic. Also, it highlights areas of research concentration and areas that are overlooked. Shedding light on the presence of more research originating from computer sciences and focusing on machine learning over human learning represent an important contribution of this study, which may foster interdisciplinary collaboration with experts from diverse fields, broadening the scope of research on technologies and learning in workplaces.
EMERALD GROUP PUBLISHING LTD
2046-9012
2046-9020
2023


10.1108/EJTD-10-2023-0152
Business & Economics

WOS:001129375400001
https://www-webofscience-com.uitm.idm.oclc.org/wos/woscc/full-record/WOS:001129375400001
title Systematic bibliometric review of artificial intelligence in human resource development: insights for HRD researchers, practitioners and policymakers
title_short Systematic bibliometric review of artificial intelligence in human resource development: insights for HRD researchers, practitioners and policymakers
title_full Systematic bibliometric review of artificial intelligence in human resource development: insights for HRD researchers, practitioners and policymakers
title_fullStr Systematic bibliometric review of artificial intelligence in human resource development: insights for HRD researchers, practitioners and policymakers
title_full_unstemmed Systematic bibliometric review of artificial intelligence in human resource development: insights for HRD researchers, practitioners and policymakers
title_sort Systematic bibliometric review of artificial intelligence in human resource development: insights for HRD researchers, practitioners and policymakers
container_title EUROPEAN JOURNAL OF TRAINING AND DEVELOPMENT
language English
format Review; Early Access
description PurposeArtificial intelligence (AI) is a significant game changer in human resource development (HRD). The launch of ChatGPT has accelerated its progress and amplified its impact on organizations and employees. This study aims to review and examine literature on AI in HRD, using a bibliometric approach.Design/methodology/approachThis study is a bibliometric review. Scopus was used to identify studies in the field. In total, 236 papers published in the past 10 years were examined using the VOSviewer program.FindingsThe obtained results showed that most cited documents and authors are mainly from computer sciences, emphasizing machine learning over human learning. While it was expected that HRD authors and studies would have a more substantial presence, the lesser prominence suggests several interesting avenues for explorations.Practical implicationsThis study provides insights and recommendations for researchers, managers, HRD practitioners and policymakers. Prioritizing the development of both humans and machines becomes crucial, as an exclusive focus on machines may pose a risk to the sustainability of employees' skills and long-term career prospects.Originality/valueThere is a dearth of bibliometric studies examining AI in HRD. Hence, this study proposes a relatively unexplored approach to examine this topic. It provides a visual and structured overview of this topic. Also, it highlights areas of research concentration and areas that are overlooked. Shedding light on the presence of more research originating from computer sciences and focusing on machine learning over human learning represent an important contribution of this study, which may foster interdisciplinary collaboration with experts from diverse fields, broadening the scope of research on technologies and learning in workplaces.
publisher EMERALD GROUP PUBLISHING LTD
issn 2046-9012
2046-9020
publishDate 2023
container_volume
container_issue
doi_str_mv 10.1108/EJTD-10-2023-0152
topic Business & Economics
topic_facet Business & Economics
accesstype
id WOS:001129375400001
url https://www-webofscience-com.uitm.idm.oclc.org/wos/woscc/full-record/WOS:001129375400001
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collection Web of Science (WoS)
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