The configurational effects of artificial intelligence-based hiring decisions on applicants' justice perception and organisational commitment

IF 4.9 3区 管理学 Q1 INFORMATION SCIENCE & LIBRARY SCIENCE
Jun Yu, Zhengcong Ma, Lin Zhu
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Abstract

Purpose This study aims to investigate the configurational effects of five rules – artificial intelligence (AI)-based hiring decision transparency, consistency, voice, explainability and human involvement – on applicants' procedural justice perception (APJP) and applicants' interactional justice perception (AIJP). In addition, this study examines whether the identified configurations could further enhance applicants' organisational commitment (OC). Design/methodology/approach Drawing on the justice model of applicants' reactions, the authors conducted a longitudinal survey of 254 newly recruited employees from 36 Chinese companies that utilise AI in their hiring. The authors employed fuzzy-set qualitative comparative analysis (fsQCA) to determine which configurations could improve APJP and AIJP, and the authors used propensity score matching (PSM) to analyse the effects of these configurations on OC. Findings The fsQCA generates three patterns involving five configurations that could improve APJP and AIJP. For pattern 1, when AI-based recruitment with high interpersonal rule (AI human involvement) aims for applicants' justice perception (AJP) through the combination of high informational rule (AI explainability) and high procedural rule (AI voice), there must be high levels of AI consistency and AI voice to complement AI explainability, and only this pattern of configurations can further enhance OC. In pattern 2, for the combination of high informational rule (AI explainability) and low procedural rule (absent AI voice), AI recruitment with high interpersonal rule (AI human involvement) should focus on AI transparency and AI explainability rather than the implementation of AI voice. In pattern 3, a mere combination of procedural rules could sufficiently improve AIJP. Originality/value This study, which involved real applicants, is one of the few empirical studies to explore the mechanisms behind the impact of AI hiring decisions on AJP and OC, and the findings may inform researchers and managers on how to best utilise AI to make hiring decisions.
基于人工智能的招聘决策对应聘者公正感知和组织承诺的配置效应
本研究旨在探讨基于人工智能(AI)的招聘决策透明度、一致性、声音、可解释性和人类参与五种规则对求职者程序公平感知(APJP)和互动公平感知(AIJP)的配置效应。此外,本研究亦探讨已识别的配置是否能进一步提升申请人的组织承诺。根据应聘者反应的公正模型,作者对36家在招聘中使用人工智能的中国公司的254名新招聘员工进行了纵向调查。采用模糊集定性比较分析(fsQCA)确定了哪些配置可以改善APJP和AIJP,并采用倾向得分匹配(PSM)分析了这些配置对OC的影响。结果fsQCA生成了三种模式,涉及五种配置,可以改善APJP和AIJP。对于模式1,当高人际规则的人工智能招聘(AI human involvement)通过高信息规则(AI可解释性)和高程序规则(AI voice)的结合来实现应聘者的公正感知(AJP)时,必须有高水平的AI一致性和AI voice来补充AI可解释性,只有这种配置模式才能进一步增强OC。在模式2中,对于高信息规则(AI可解释性)和低程序规则(缺乏AI语音)的组合,具有高人际规则(AI人类参与)的AI招聘应该关注AI透明度和AI可解释性,而不是AI语音的实施。在模式3中,仅仅是程序规则的组合就可以充分改善AIJP。独创性/价值本研究涉及真实的求职者,是少数探索人工智能招聘决策对AJP和OC影响背后机制的实证研究之一,研究结果可能会告诉研究人员和管理人员如何最好地利用人工智能做出招聘决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Information Technology & People
Information Technology & People INFORMATION SCIENCE & LIBRARY SCIENCE-
CiteScore
8.20
自引率
13.60%
发文量
121
期刊介绍: Information Technology & People publishes work that is dedicated to understanding the implications of information technology as a tool, resource and format for people in their daily work in organizations. Impact on performance is part of this, since it is essential to the well being of employees and organizations alike. Contributions to the journal include case studies, comparative theory, and quantitative research, as well as inquiries into systems development methods and practice.
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