AI-Augmented HRM: Literature review and a proposed multilevel framework for future research

系统回顾 背景(考古学) 知识管理 现存分类群 人力资源管理 款待 实证研究 竞争优势 灰色文学 供应链管理 计算机科学 供应链 管理科学 业务 政治学 营销 工程类 地理 哲学 梅德林 考古 旅游 认识论 进化生物学 法学 生物
作者
Verma Prikshat,Mohammad Islam,Parth Patel,Ashish Malik,Pawan Budhwar,Suraksha Gupta
出处
期刊:Technological Forecasting and Social Change [Elsevier BV]
卷期号:193: 122645-122645 被引量:123
标识
DOI:10.1016/j.techfore.2023.122645
摘要

The research using artificial intelligence (AI) applications in HRM functional areas has gained much traction and a steep surge over the last three years. The extant literature observes that contemporary AI applications have augmented HR functionalities. AI-Augmented HRM HRM(AI) has assumed strategic importance for achieving HRM domain-level outcomes and organisational outcomes for a sustainable competitive advantage. Moreover, there is increasing evidence of literature reviews pertaining to the use of AI applications in different management disciplines (i.e., marketing, supply chain, accounting, hospitality, and education). There is a considerable gap in existing studies regarding a focused, systematic literature review on HRM(AI), specifically for a multilevel framework that can offer research scholars a platform to conduct potential future research. To address this gap, the authors present a systematic literature review (SLR) of 56 articles published in 35 peer-reviewed academic journals from October 1990 to December 2021. The purpose is to analyse the context (i.e., chronological distribution, geographic spread, sector-wise distribution, theories, and methods used) and the theoretical content (key themes) of HRM(AI) research and identify gaps to present a robust multilevel framework for future research. Based upon this SLR, the authors identify noticeable research gaps, mainly stemming from - unequal distribution of previous HRM(AI) research in terms of the smaller number of sector/country-specific studies, absence of sound theoretical base/frameworks, more research on routine HR functions(i.e. recruitment and selection) and significantly less empirical research. We also found minimal research evidence that links HRM(AI) and organisational-level outcomes. To overcome this gap, we propose a multilevel framework that offers a platform for future researchers to draw linkage among diverse variables starting from the contextual level to HRM and organisational level outcomes that eventually enhance operational and financial organisational performance.
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