A critical review of algorithms in HRM: Definition, theory, and practice

IF 8.2 1区 管理学 Q1 MANAGEMENT Human Resource Management Review Pub Date : 2021-03-01 DOI:10.1016/j.hrmr.2019.100698
Maggie M. Cheng, Rick D. Hackett
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引用次数: 77

Abstract

The recent surge of interest concerning data analytics in both business and academia has been accompanied by significant advances in the commercialization of HRM (Human Resource Management)-related algorithmic applications. Our review of the literature uncovered 22 high quality academic papers and 122 practitioner-oriented items (e.g., popular press and trade journals). As part of our review, we draw several distinctions between the typical use of HRM algorithms and more traditional statistical applications. We find that while HRM algorithmic applications tend not to be especially theory-driven, the “black box” label often invoked by critics of these efforts is not entirely appropriate. Instead, HRM-related algorithms are best characterized as heuristics. In considering the implications of our findings, we note that there is already evidence of a research-practitioner divide; relative to scholarly efforts, practitioner interest in HRM algorithms has grown exponentially in recent years.

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人力资源管理中的算法:定义、理论和实践
最近商业和学术界对数据分析的兴趣激增,伴随着人力资源管理(人力资源管理)相关算法应用商业化的重大进展。我们对文献的回顾发现了22篇高质量的学术论文和122篇以从业者为导向的项目(例如,大众出版社和行业期刊)。作为我们回顾的一部分,我们在人力资源管理算法的典型使用和更传统的统计应用程序之间得出了几个区别。我们发现,虽然人力资源管理算法应用往往不是特别由理论驱动的,但这些努力的批评者经常引用的“黑箱”标签并不完全合适。相反,人力资源管理相关的算法最好被描述为启发式。在考虑我们的研究结果的影响时,我们注意到已经有证据表明研究人员与从业人员之间存在分歧;相对于学术上的努力,从业者对人力资源管理算法的兴趣近年来呈指数级增长。
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来源期刊
CiteScore
20.20
自引率
7.00%
发文量
0
审稿时长
48 days
期刊介绍: The Human Resource Management Review (HRMR) is a quarterly academic journal dedicated to publishing scholarly conceptual and theoretical articles in the field of human resource management and related disciplines such as industrial/organizational psychology, human capital, labor relations, and organizational behavior. HRMR encourages manuscripts that address micro-, macro-, or multi-level phenomena concerning the function and processes of human resource management. The journal publishes articles that offer fresh insights to inspire future theory development and empirical research. Critical evaluations of existing concepts, theories, models, and frameworks are also encouraged, as well as quantitative meta-analytical reviews that contribute to conceptual and theoretical understanding. Subject areas appropriate for HRMR include (but are not limited to) Strategic Human Resource Management, International Human Resource Management, the nature and role of the human resource function in organizations, any specific Human Resource function or activity (e.g., Job Analysis, Job Design, Workforce Planning, Recruitment, Selection and Placement, Performance and Talent Management, Reward Systems, Training, Development, Careers, Safety and Health, Diversity, Fairness, Discrimination, Employment Law, Employee Relations, Labor Relations, Workforce Metrics, HR Analytics, HRM and Technology, Social issues and HRM, Separation and Retention), topics that influence or are influenced by human resource management activities (e.g., Climate, Culture, Change, Leadership and Power, Groups and Teams, Employee Attitudes and Behavior, Individual, team, and/or Organizational Performance), and HRM Research Methods.
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