Saving face: Leveraging artificial intelligence-based negative feedback to enhance employee job performance

IF 6 2区 管理学 Q1 MANAGEMENT
Jialiang Pei, Hongli Wang, Qiuping Peng, Shanshi Liu
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引用次数: 0

Abstract

Negative performance feedback is vital for stimulating employees to enhance their performance despite resulting in stress and adverse work outcomes. Fortunately, artificial intelligence (AI)-enabled automated agents have gradually assumed certain functions led by human leaders, such as providing feedback. Drawing from regulatory focus theory, we propose that AI-based feedback systems can serve as a “remediation” tool, effectively mitigating employees' apprehensions about receiving negative feedback. In two studies, we found that for employees who fear losing face, AI-based negative feedback motivates promotion-focused cognition—motivation to learn—representing a learning mechanism to promote job performance and impedes their prevention-focused cognition—interpersonal rumination—reducing the depletion needed for job performance. These findings present novel perspectives on using AI in performance feedback.

保住面子:利用基于人工智能的负面反馈提高员工工作绩效
负面绩效反馈对于激励员工提高绩效至关重要,尽管这会导致压力和不利的工作结果。幸运的是,人工智能(AI)支持的自动化代理已逐渐承担起人类领导者的某些职能,如提供反馈。借鉴监管焦点理论,我们提出,基于人工智能的反馈系统可以作为一种 "补救 "工具,有效减轻员工对接收负面反馈的担忧。在两项研究中,我们发现,对于那些害怕丢面子的员工来说,基于人工智能的负面反馈会激发他们的晋升认知--学习动机--这是一种促进工作绩效的学习机制,同时也会阻碍他们的预防认知--人际反刍--减少工作绩效所需的消耗。这些发现为在绩效反馈中使用人工智能提供了新的视角。
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来源期刊
CiteScore
11.50
自引率
9.10%
发文量
0
期刊介绍: Covering the broad spectrum of contemporary human resource management, this journal provides academics and practicing managers with the latest concepts, tools, and information for effective problem solving and decision making in this field. Broad in scope, it explores issues of societal, organizational, and individual relevance. Journal articles discuss new theories, new techniques, case studies, models, and research trends of particular significance to practicing HR managers
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