人力资源管理过程中伦理决策的人工智能算法方法

IF 8.2 1区 管理学 Q1 MANAGEMENT Human Resource Management Review Pub Date : 2023-03-01 DOI:10.1016/j.hrmr.2022.100925
Waymond Rodgers , James M. Murray , Abraham Stefanidis , William Y. Degbey , Shlomo Y. Tarba
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引用次数: 22

摘要

管理学者和实践者强调了道德维度在战略选择中的重要性。然而,迄今为止,很少有努力旨在从理论上理解个人/组织在人力资源管理(HRM)决策过程中的道德立场,具体道德立场和战略的选择,或对这些决策的决策后会计。为此,我们提出了一个吞吐量模型框架,描述了算法人力资源管理环境下个人的决策过程。该模型描述了感知、判断和信息的使用如何影响策略选择,确定了如何通过使用某些道德决策算法路径来支持不同的策略。为了关注人工智能(AI)在人力资源管理中的影响和接受程度,本研究从多学科理论视角中获取见解,例如人工智能增强(HRM(AI))和人力资源管理(AI)同化过程、人工智能介导的社会交换以及判断和选择文献。我们强调了在人工智能生成的人力资源管理决策的可理解性和问责性方面,在采用人工智能以获得更好的人力资源管理结果时使用算法伦理立场,这在现有研究中往往未得到充分探索,我们提出了它们在人力资源管理战略选择中的关键作用。
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An artificial intelligence algorithmic approach to ethical decision-making in human resource management processes

Management scholars and practitioners have highlighted the importance of ethical dimensions in the selection of strategies. However, to date, there has been little effort aimed at theoretically understanding the ethical positions of individuals/organizations concerning human resource management (HRM) decision-making processes, the selection of specific ethical positions and strategies, or the post-decision accounting for those decisions. To this end, we present a Throughput model framework that describes individuals' decision-making processes in an algorithmic HRM context. The model depicts how perceptions, judgments, and the use of information affect strategy selection, identifying how diverse strategies may be supported by the employment of certain ethical decision-making algorithmic pathways. In focusing on concerns relating to the impact and acceptance of artificial intelligence (AI) integration in HRM, this research draws insights from multidisciplinary theoretical lenses, such as AI-augmented (HRM(AI)) and HRM(AI) assimilation processes, AI-mediated social exchange, and the judgment and choice literature. We highlight the use of algorithmic ethical positions in the adoption of AI for better HRM outcomes in terms of intelligibility and accountability of AI-generated HRM decision-making, which is often underexplored in existing research, and we propose their key role in HRM strategy selection.

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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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