The mediating effect of leadership in artificial intelligence success for employee-engagement

IF 4.1 3区 管理学 Q2 BUSINESS
Divya Divya, Riya Jain, Priya Chetty, Vikash Siwach, Ashish Mathur
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引用次数: 0

Abstract

Purpose

The paper focuses on bridging the existing literature gap on the role of leadership in influencing employee engagement considering the advancement in technologies. With this, the author explores how the three critical elements of service-based companies' business environment-artificial intelligence (AI) success, employee engagement, and leadership are interlinked and are valuable for raising the engagement level of employees.

Design/methodology/approach

A purposive sampling strategy was used to select the employees working in the respective companies. The survey was distributed to 150 senior management employees but responses were received from only 56 employees making the response rate 37.33%. Consequently, an empirical examination of these 56 senior management employees belonging to service-based companies based in Delhi NCR using a survey questionnaire was conducted.

Findings

The PLS-SEM (partial least squares structured equation modelling) revealed that AI has a positive role in affecting employee engagement levels and confirmed the mediation of leadership. The magnitude of the indirect effect was negative leading to a reduction in total effect magnitude; however, as the indirect effect model has a higher R square value, the inclusion of a mediating variable made the model more effective.

Research limitations/implications

This study contributes to extending the existing knowledge of the academicians about the relationship theory of leadership, AI implementation in organizations, AI association with leadership and AI impact on employee engagement. The author extends the theoretical understanding by showing that more integration of AI-supported leadership could enable organizations to enhance employee experience and motivate them to be engaged. Despite its relevance, due to the limited sample size, focus on a specific geographic area (Delhi NCR) and the constraint of only using quantitative analysis, the findings open the scope for future research in the form of qualitative and longitudinal studies to identify AI-supported leadership roles.

Practical implications

The study findings are beneficial majorly for organizations to provide them with more in-depth information about the role of AI and leadership style in influencing employee engagement. The identified linkage enables the managers of the company to design more employee-tailored strategies for targeting their engagement level and enhancing the level of productivity of employees. Moreover, AI-supported leadership helps raise the productivity of employees by amplifying their intelligence without making technology a replacement for human resources and also reducing the turnover rate of employees due to the derivation of more satisfaction from existing jobs. Thus, given the economic benefit and societal benefits, the study is relevant.

Originality/value

The existing studies focused on the direct linkage between AI and employee engagement or including artificial intelligence as a mediating variable. The role of leadership is not evaluated. The leadership enables supporting the easy integration of AI in the organization; therefore, it has an important role in driving employee engagement. This study identifies the contribution of leadership in organizations by providing the means of enhancing employee satisfaction without hampering the social identity of the company due to the integration of AI.

人工智能成功中领导力对员工参与的中介效应
目的 本文侧重于弥补现有文献中关于领导力在影响员工敬业度方面的作用的空白。为此,作者探讨了服务型公司商业环境中的三个关键要素--人工智能(AI)的成功、员工敬业度和领导力是如何相互关联并对提高员工敬业度具有价值的。调查问卷分发给 150 名高级管理人员,但只收到 56 名员工的回复,回复率为 37.33%。结果PLS-SEM(偏最小二乘结构方程模型)显示,人工智能对员工敬业度有积极影响,并证实了领导力的中介作用。间接效应的程度为负,导致总效应程度降低;然而,由于间接效应模型的 R 平方值较高,加入中介变量使模型更加有效。研究局限/意义本研究有助于扩展学术界关于领导力关系理论、组织中人工智能的实施、人工智能与领导力的关联以及人工智能对员工敬业度的影响的现有知识。作者拓展了理论认识,表明更多融合人工智能支持的领导力可使组织提升员工体验并激励他们参与其中。尽管研究具有相关性,但由于样本数量有限,研究重点集中在特定的地理区域(德里国家首都区),且仅采用定量分析,因此研究结果为今后以定性和纵向研究的形式确定人工智能支持的领导角色开辟了研究空间。所发现的联系使公司管理者能够设计出更多适合员工的策略,从而有针对性地提高员工的敬业度和生产力水平。此外,人工智能支持的领导力有助于通过放大员工的智力来提高其生产力,而不会让技术取代人力资源,同时还能从现有工作中获得更多满足感,从而降低员工流失率。因此,考虑到经济效益和社会效益,本研究具有现实意义。原创性/价值现有研究侧重于人工智能与员工敬业度之间的直接联系,或将人工智能作为中介变量。领导力的作用没有得到评估。领导力能够支持人工智能轻松融入组织,因此在推动员工敬业度方面发挥着重要作用。本研究确定了领导力在组织中的贡献,它提供了提高员工满意度的方法,同时不会因为人工智能的整合而妨碍公司的社会认同。
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
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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