基于AI算法特征的人工智能人力资源管理对员工的阴暗面

IF 2.7 4区 管理学 Q2 MANAGEMENT Journal of Organizational Change Management Pub Date : 2023-11-27 DOI:10.1108/jocm-10-2022-0308
Yu Zhou, Lijun Wang, Wansi Chen
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引用次数: 0

摘要

目的性ai是人力资源管理实践中的新兴工具,越来越受到人力资源管理研究者和人力资源管理实践者的关注。毫无疑问,人工智能的人力资源管理产生了积极的影响,但也引发了负面影响。更好地了解人工智能人力资源管理的阴暗面,对于管理实施和丰富相关理论研究具有重要意义。设计/方法/方法在本研究中,作者对人工智能人力资源管理领域的已发表文献进行了系统回顾。系统的文献综述使作者能够使用透明且易于重复的程序对所涵盖主题的现有研究进行批判性分析,综合和概述。在这项研究中,作者使用人工智能算法特征(全面性,即时性和不透明性)作为主要焦点来阐述人工智能支持的人力资源管理的负面影响。从不一致的文献中,作者区分了人工智能算法全面性的两个概念:综合分析和综合数据收集。作者还将瞬时性分为瞬时干预和瞬时交互。不透明性也被描述为:难以理解和难以观察。针对每个算法特征,本研究将组织行为理论与人工智能人力资源管理研究联系起来,阐述了人工智能人力资源管理对员工产生负面影响的潜在理论机制。原创性/价值基于人工智能算法特征的次要维度,作者详细阐述了人工智能人力资源管理对员工的负面影响背后的潜在理论机制。这一阐述为推进人工智能人力资源管理的研究奠定了坚实的理论基础。并对今后的研究方向进行了展望。
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The dark side of AI-enabled HRM on employees based on AI algorithmic features

Purpose

AI is an emerging tool in HRM practices that has drawn increasing attention from HRM researchers and HRM practitioners. While there is little doubt that AI-enabled HRM exerts positive effects, it also triggers negative influences. Gaining a better understanding of the dark side of AI-enabled HRM holds great significance for managerial implementation and for enriching related theoretical research.

Design/methodology/approach

In this study, the authors conducted a systematic review of the published literature in the field of AI-enabled HRM. The systematic literature review enabled the authors to critically analyze, synthesize and profile existing research on the covered topics using transparent and easily reproducible procedures.

Findings

In this study, the authors used AI algorithmic features (comprehensiveness, instantaneity and opacity) as the main focus to elaborate on the negative effects of AI-enabled HRM. Drawing from inconsistent literature, the authors distinguished between two concepts of AI algorithmic comprehensiveness: comprehensive analysis and comprehensive data collection. The authors also differentiated instantaneity into instantaneous intervention and instantaneous interaction. Opacity was also delineated: hard-to-understand and hard-to-observe. For each algorithmic feature, this study connected organizational behavior theory to AI-enabled HRM research and elaborated on the potential theoretical mechanism of AI-enabled HRM's negative effects on employees.

Originality/value

Building upon the identified secondary dimensions of AI algorithmic features, the authors elaborate on the potential theoretical mechanism behind the negative effects of AI-enabled HRM on employees. This elaboration establishes a robust theoretical foundation for advancing research in AI-enable HRM. Furthermore, the authors discuss future research directions.

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来源期刊
CiteScore
5.80
自引率
3.60%
发文量
50
期刊介绍: ■Adapting strategic planning to the need for change ■Leadership research ■Responsibility for change implementation and follow-through ■The psychology of change and its effect on the workforce ■TQM - will it work in your organization? Successful organizations respond intelligently to factors which precipitate change. Economic climates, political trends, changes in consumer demands, management policy or structure, employment levels and financial resources - all these elements are constantly at play to ensure that organizations clinging on to static structures will ultimately lose out. But change is a dynamic and alarming thing - this journal addresses how to manage it positively.
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