Exploring the nexus of artificial intelligence in talent acquisition: Unravelling cost-benefit dynamics, seizing opportunities, and mitigating risks

Sania Khan, Shah Faisal, George Thomas
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Abstract

The rise in talent management complications led organizations to rely on the latest technologies to automate their routine HRM tasks through AI. This study proposed to examine fundamental aspects of AI in talent acquisition (cost-benefit, opportunities, and risk factors) from the context of strategic analysis and decision-making. 52 respondents from HRM and the information technology departments from fifteen large dairy enterprises, each with more than one thousand employees, were included in the focus group discussion. Both departments were included in the focus group discussion as they heavily employ AI in talent acquisition. The opinions were collected in multiple rounds based on the cost, benefit, opportunity, and risk criteria using the analytical hierarchy process, a multi-criteria decision-making framework. The findings demonstrated that most respondents opinioned AI supports talent acquisition with many opportunities (38.7%) that involve the identification of the best applicants (18.7%) and different benefits (33.2%) to the organization in the form of saving time and cost (16.1%) leading to higher efficacy. The study infers that the application of AI in HRM significantly contributes to talent acquisition, streamlining processes, improving efficiency, and enhancing decision-making. The study recommends that implementing AI in talent acquisition requires a strategic approach, and organizations need to consider factors such as data privacy, ethical use of AI, and ongoing training to ensure successful integration into their hiring processes. Additionally, regular monitoring and adjustments are essential to optimize the effectiveness of AI tools in talent acquisition. AcknowledgmentThe authors of this article would like to thank Prince Sultan University for its financial and academic support for this publication.
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探索人工智能在人才招聘中的作用:解读成本效益动态,抓住机遇,降低风险
人才管理复杂化的兴起促使企业依靠最新技术,通过人工智能实现人力资源管理日常工作的自动化。本研究拟从战略分析和决策的角度,研究人工智能在人才招聘中的基本方面(成本效益、机遇和风险因素)。来自 15 家大型乳品企业(每家企业的员工人数均超过一千人)的人力资源管理部门和信息技术部门的 52 名受访者参与了焦点小组讨论。这两个部门都在人才招聘中大量使用了人工智能,因此被纳入了焦点小组讨论。根据成本、效益、机会和风险标准,采用多标准决策框架--层次分析法--进行了多轮意见收集。研究结果表明,大多数受访者认为人工智能为人才招聘提供了许多机会(38.7%),包括识别最佳申请人(18.7%),以及为组织带来不同的收益(33.2%),如节省时间和成本(16.1%),从而提高效率。研究推断,人工智能在人力资源管理中的应用大大有助于人才招聘、简化流程、提高效率和加强决策。研究建议,在人才招聘中实施人工智能需要采取战略性方法,企业需要考虑数据隐私、人工智能的道德使用和持续培训等因素,以确保成功融入招聘流程。此外,定期监测和调整对于优化人工智能工具在人才招聘中的有效性也至关重要。 鸣谢本文作者感谢苏丹王子大学为本出版物提供的资金和学术支持。
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来源期刊
CiteScore
2.90
自引率
0.00%
发文量
152
审稿时长
11 weeks
期刊介绍: The purpose of the journal is coverage of different aspects of management and governance, such as international organizations and communities’ management, state and regional governance, company’s management, etc. The key aspects of planning, organization, motivation and control in various areas and in different countries are subject of the journal''s scope. The journal publishes articles, which are focused on existing and new methods, techniques and approaches in the field of management. It publishes contemporary and innovative researches, including theoretical and empirical research papers.
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