人才招聘中的人工智能:探索组织和运营层面

Dhyana Paramita, Simon Okwir, Cali Nuur
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引用次数: 0

摘要

目的随着近来人工智能的普及,组织不仅在改变其组织设计,也在改变招聘过程中的输入和输出操作流程。本文旨在探讨在人才招聘过程中部署人工智能所带来的组织和运营层面的问题。作者与瑞典的人力资源(HR)专业人士、招聘人员和人工智能招聘平台提供商进行了半结构化访谈和会谈。研究结果本研究从算法管理和ambidexterity理论中汲取灵感,提出了一个全面的理论框架,强调了人工智能在人才招聘中发挥变革作用的四个综合维度。研究结果提供了一个谨慎的视角,建议不要过分强调仅由算法管理驱动的运营绩效。首先,样本数量和多样性受到限制,因为研究结果是基于与人力资源专业人士、招聘人员和人工智能招聘平台提供商进行的数量有限的半结构化访谈和会议得出的。其次,人工智能技术的快速发展意味着随着新的进步和应用的出现,研究结果可能很快就会过时。此外,还能提高他们做出明智决策、优化流程和有效应对挑战的能力。社会影响这些结果预示着对就业机会的积极和消极影响。从积极的一面来看,人工智能可以简化招聘流程,使合格的候选人更容易被发现并迅速聘用。原创性/价值通过研究交易效率和关系参与之间的平衡,该研究解决了组织在招聘中实施人工智能时面临的一个关键权衡问题。其独创性在于,它对目前普遍强调的电子招聘进行了批判。
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Artificial intelligence in talent acquisition: exploring organisational and operational dimensions

Purpose

With the recent proliferation of AI, organisations are transforming not only their organisational design but also the input and output operational processes of the hiring process. The purpose of this paper is to explore the organisational and operational dimensions resulting from the deployment of AI during talent acquisition process.

Design/methodology/approach

The authors conducted semi-structured interviews and meetings with human resources (HRs) professionals, recruiters and AI hiring platform providers in Sweden. Using an inductive data analysis rooted in the principles of grounded theory, the study uncovered four aggregate dimensions critical to understanding the role of AI in talent acquisition.

Findings

With insights from algorithmic management and ambidexterity theory, the study presents a comprehensive theoretical framework that highlights four aggregate dimensions describing AI’s transformative role in talent recruitment. The results provide a cautionary perspective, advising against an excessive emphasis on operational performance driven solely by algorithmic management.

Research limitations/implications

The study is limited in scope and subject to several constraints. Firstly, the sample size and diversity are restricted, as the findings are based on a limited number of semi-structured interviews and meetings with HRs professionals, recruiters, and AI hiring platform providers. Secondly, the rapid evolution of AI technologies means that the study’s findings may quickly become outdated as new advancements and applications emerge.

Practical implications

The results provide managers with actionable information that can lead to more precise and strategic management practices, ultimately contributing to improved organizational performance and outcomes. Plus, enhancing their ability to make informed decisions, optimize processes and address challenges effectively.

Social implications

The results signal both positive and negative impacts on employment opportunities. On the positive side, AI can streamline recruitment processes, making it easier for qualified candidates to be identified and hired quickly. However, AI systems can also perpetuate existing biases present in the data they are trained on, leading to unfair hiring practices where certain groups are systematically disadvantaged.

Originality/value

By examining the balance between transactional efficiency and relational engagement, the research addresses a crucial trade-off that organizations face when implementing AI in recruitment. The originality lies in its critique of the prevailing emphasis on e-recruiting.

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来源期刊
CiteScore
6.00
自引率
7.10%
发文量
99
期刊介绍: The IJOA welcomes papers that draw on, but not exclusively: ■Organization theory ■Organization behaviour ■Organization development ■Organizational learning ■Strategic and change management ■People in organizational contexts including human resource management and human resource development ■Business and its interrelationship with society ■Ethics and morals, spirituality
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