人工智能在人才招聘中的应用:跨国公司多案例研究

IF 4.1 3区 管理学 Q2 BUSINESS Management Decision Pub Date : 2024-05-07 DOI:10.1108/md-07-2023-1194
Julia Stefanie Roppelt, Nina Sophie Greimel, Dominik K. Kanbach, Stephan Stubner, Thomas K. Maran
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引用次数: 0

摘要

本文旨在探讨跨国公司(MNCs)如何在其人才招聘(TA)实践中有效采用人工智能(AI)。虽然人工智能在应对特定地区人才短缺和求职者激增等新出现的挑战方面的潜力已得到传闻强调,但有关其在人才招聘中的有效部署和采用的实证证据却很有限。因此,本文试图建立一个理论模型,描述跨国公司在 TA 中有效采用人工智能的动机、障碍、程序步骤和关键因素。设计/方法/途径鉴于有关我们研究目标的实证文献很少,我们采用了定性方法,包括多案例研究(由七个行业的 19 个案例组成)和基础理论方法。研究结果我们提出的框架被称为 "在技术援助中有效采用人工智能的框架",它将在技术援助中有效采用人工智能所必需的动机、障碍、程序步骤和关键成功因素具体化。研究局限/意义本文为有关在技术援助中有效采用人工智能的文献和采用理论做出了贡献。实践意义此外,本文还为寻求有效实施和采用人工智能战略的技术援助管理人员提供了指导,尤其是在面对新出现的挑战时。本研究深入探讨了企业在 TA 中有效采用人工智能的潜在动机和过程。
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Artificial intelligence in talent acquisition: a multiple case study on multi-national corporations

Purpose

The aim of this paper is to explore how multi-national corporations (MNCs) can effectively adopt artificial intelligence (AI) into their talent acquisition (TA) practices. While the potential of AI to address emerging challenges, such as talent shortages and applicant surges in specific regions, has been anecdotally highlighted, there is limited empirical evidence regarding its effective deployment and adoption in TA. As a result, this paper endeavors to develop a theoretical model that delineates the motives, barriers, procedural steps and critical factors that can aid in the effective adoption of AI in TA within MNCs.

Design/methodology/approach

Given the scant empirical literature on our research objective, we utilized a qualitative methodology, encompassing a multiple-case study (consisting of 19 cases across seven industries) and a grounded theory approach.

Findings

Our proposed framework, termed the Framework on Effective Adoption of AI in TA, contextualizes the motives, barriers, procedural steps and critical success factors essential for the effective adoption of AI in TA.

Research limitations/ implications

This paper contributes to literature on effective adoption of AI in TA and adoption theory.

Practical implications

Additionally, it provides guidance to TA managers seeking effective AI implementation and adoption strategies, especially in the face of emerging challenges.

Originality/value

To the best of the authors' knowledge, this study is unparalleled, being both grounded in theory and based on an expansive dataset that spans firms from various regions and industries. The research delves deeply into corporations' underlying motives and processes concerning the effective adoption of AI in TA.

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来源期刊
CiteScore
8.20
自引率
8.70%
发文量
126
期刊介绍: ■In-depth studies of major issues ■Operations management ■Financial management ■Motivation ■Entrepreneurship ■Problem solving and proactivity ■Serious management argument ■Strategy and policy issues ■Tactics for turning around company crises Management Decision, considered by many to be the best publication in its field, consistently offers thoughtful and provocative insights into current management practice. As such, its high calibre contributions from leading management philosophers and practitioners make it an invaluable resource in the aggressive and demanding trading climate of the Twenty-First Century.
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