Personalized human resource management via HR analytics and artificial intelligence: Theory and implications

IF 5.5 Q1 MANAGEMENT Asia Pacific Management Review Pub Date : 2023-05-05 DOI:10.1016/j.apmrv.2023.04.004
Xiaoyu Huang , Fu Yang , Jiaming Zheng , Cailing Feng , Lihua Zhang
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引用次数: 7

Abstract

This conceptual paper theorizes the emerging concept of personalized human resource management (HRM), which refers to HRM programs and practices that vary across individuals within an organization. As a subset of high-performance work practices (HPWPs), personalized HRM is implemented at the individual level and represents the next generation of HRM, which is characterized by the adoption of advanced HR analytics and artificial intelligence (AI) to provide tailored HR solutions. We argue that personalized HRM constitutes a unique source of sustained firm competitive advantage and offers additional beneficial performance effects on top of other HPWPs. Drawing on the theories of individual differences and person-organization fit, we explain why personalized HRM outperforms traditional standardized HRM in terms of productivity, favorable HR climate, flexibility, return on investment of HRM, and firm financial performance. We also suggest that business strategy is a moderator of the relationship between HRM and firm performance. Building on the AI job replacement theory, we further propose that the mechanical and analytical intelligence (intuitive and empathetic intelligence) required for personalized HRM tasks is positively (negatively) related to the adoption of AI. Lastly, we elaborate on the implications and explain how advanced HR analytics and AI can facilitate the transition toward personalized HRM.

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基于人力资源分析和人工智能的个性化人力资源管理:理论与启示
这篇概念性论文理论化了个性化人力资源管理(HRM)这一新兴概念,它指的是组织内不同个体的人力资源管理计划和实践。作为高性能工作实践(HPWPs)的一个子集,个性化人力资源管理是在个人层面实施的,代表了下一代人力资源管理,其特点是采用先进的人力资源分析和人工智能(AI)来提供量身定制的人力资源解决方案。我们认为,个性化的人力资源管理构成了企业持续竞争优势的独特来源,并在其他hpwp之上提供了额外的有益绩效效应。根据个体差异和人与组织契合的理论,我们解释了为什么个性化人力资源管理在生产力、有利的人力资源环境、灵活性、人力资源管理的投资回报率和企业财务绩效方面优于传统的标准化人力资源管理。我们还认为,企业战略是人力资源管理与企业绩效之间关系的调节因子。在人工智能工作替代理论的基础上,我们进一步提出,个性化人力资源管理任务所需的机械和分析智能(直觉和移情智能)与人工智能的采用呈正(负)相关。最后,我们详细阐述了其含义,并解释了先进的人力资源分析和人工智能如何促进向个性化人力资源管理的过渡。
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来源期刊
CiteScore
8.00
自引率
4.50%
发文量
47
期刊介绍: Asia Pacific Management Review (APMR), peer-reviewed and published quarterly, pursues to publish original and high quality research articles and notes that contribute to build empirical and theoretical understanding for concerning strategy and management aspects in business and activities. Meanwhile, we also seek to publish short communications and opinions addressing issues of current concern to managers in regards to within and between the Asia-Pacific region. The covered domains but not limited to, such as accounting, finance, marketing, decision analysis and operation management, human resource management, information management, international business management, logistic and supply chain management, quantitative and research methods, strategic and business management, and tourism management, are suitable for publication in the APMR.
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