Sustainable HRM the next hotspot for management research? A study using topic modelling

IF 2.4 Q3 MANAGEMENT
Shefali Singh, Kanchan Awasthi, Pradipta Patra, Jaya Srivastava, Shrawan Kumar Trivedi
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引用次数: 0

Abstract

Purpose

Sustainable human resource management (SuHRM), which aims to achieve positive environmental, social and economic outcomes at the same time, has gained prominence across industries. However, the challenges of implementing SuHRM across industries are largely under-studied. The purpose of this study is to identify the grey areas in the field of SuHRM by using an unsupervised learning algorithm on the abstracts of 607 papers published in prominent journals from 1995 to 2023. Most of the articles have been published post-2018.

Design/methodology/approach

The analysis of the data (abstracts of the selected articles) has been done using topic modelling via latent Dirichlet algorithm (LDA).

Findings

The output from topic modelling-LDA reveals nine primary focus areas of SuHRM research – the link between SuHRM and employee well-being; job satisfaction; challenges of implementing SuHRM; exploring new horizons in SuHRM; reaping the benefits of using SuHRM as a strategic tool; green HRM practices; link between SuHRM and organisational performance; link between corporate social responsible and HRM.

Research limitations/implications

The insights gained from this study along with the discussions on each topic will be extremely beneficial for researchers, academicians, journal editors and practitioners to channelise their research focus. No other study has used a smart algorithm to identify the research clusters of SuHRM.

Originality/value

By utilizing topic modeling techniques, the study offers a novel approach to analyzing and understanding trends and patterns in HRM research related to sustainability. The significance of the paper would be in its potential to shed light on emerging areas of interest and provide valuable implications for future research and practice in Sustainable HRM.

可持续人力资源管理是管理研究的下一个热点?使用主题建模的研究
目的可持续人力资源管理(SuHRM)旨在同时实现积极的环境、社会和经济成果,已在各行各业得到广泛重视。然而,对各行各业实施可持续人力资源管理所面临的挑战大多研究不足。本研究的目的是通过对 1995 年至 2023 年期间发表在著名期刊上的 607 篇论文的摘要采用无监督学习算法,找出 SuHRM 领域的灰色地带。大部分文章发表于 2018 年之后。设计/方法/途径通过潜狄利克特算法(LDA)使用主题建模对数据(所选文章的摘要)进行分析。研究结果主题建模--LDA 的结果显示了 SuHRM 研究的九个主要重点领域--SuHRM 与员工福利之间的联系;工作满意度;实施 SuHRM 的挑战;探索 SuHRM 的新视野;将 SuHRM 作为战略工具获得收益;绿色人力资源管理实践;SuHRM 与组织绩效之间的联系;企业社会责任与人力资源管理之间的联系。研究局限性/影响本研究获得的见解以及对每个主题的讨论将对研究人员、学术界人士、期刊编辑和从业人员确定研究重点大有裨益。原创性/价值通过利用主题建模技术,本研究为分析和理解与可持续性相关的人力资源管理研究的趋势和模式提供了一种新方法。本文的意义在于它有可能揭示新出现的关注领域,并为可持续人力资源管理的未来研究和实践提供有价值的启示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
6.00
自引率
7.10%
发文量
99
期刊介绍: The IJOA welcomes papers that draw on, but not exclusively: ■Organization theory ■Organization behaviour ■Organization development ■Organizational learning ■Strategic and change management ■People in organizational contexts including human resource management and human resource development ■Business and its interrelationship with society ■Ethics and morals, spirituality
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