ISSN 1671-3710
CN 11-4766/R
主办:中国科学院心理研究所
出版:科学出版社

心理科学进展 ›› 2026, Vol. 34 ›› Issue (3): 461-486.doi: 10.3724/SP.J.1042.2026.0461 cstr: 32111.14.2026.0461

• 元分析 • 上一篇    下一篇

机会抑或威胁? 人与AI协作系统对员工工作效能影响的元分析

宋一晓1, 曾铭灼2, 苏涛3   

  1. 1广东财经大学人力资源学院, 广州 510320;
    2广东财经大学工商管理学院, 广州 510320;
    3广东工业大学管理学院, 广州 510520
  • 收稿日期:2025-06-10 出版日期:2026-03-15 发布日期:2026-01-07
  • 基金资助:
    广东省哲学社会科学规划项目(GD25YSG37); 国家自然科学基金项目(72572036; 72372035); 广东省哲学社会科学规划项目(GD25CSG24); 广东省教育厅科研项目【特色创新项目】(2022WTSCX027)

Opportunity or threat? A meta-analysis of the impact of human-AI collaboration systems on employee work effectiveness

SONG Yixiao1, ZENG Mingzhuo2, SU Tao3   

  1. 1School of Human Resources, Guangdong University of Finance & Technology, Guangzhou 510320, China;
    2School of Business Administration, Guangdong University of Finance & Technology, Guangzhou 510320, China;
    3School of Management, Guangdong University of Technology, Guangzhou 510520, China
  • Received:2025-06-10 Online:2026-03-15 Published:2026-01-07

摘要: 人工智能的快速发展深刻改变了社会结构和生产模式, 其在组织中的应用对员工工作效能的影响获得了学者们的密切关注。为探讨人与AI协作系统对员工工作效能的影响及其机制, 本研究对79篇国内外文献的106个独立样本(n = 54726)进行了元分析。研究发现:人机协作应用、AI自主性、AI拟人化及员工KSAs (知识、技能和能力)对员工工作效能有正向影响, 表现为“机会”; 而人工智能危机意识则产生负向影响, 被视为“威胁”。人工智能信任和工作不安全感在人与AI协作系统和员工工作效能的关系中发挥中介作用, 进一步阐释了“机会”与“威胁”双路径。并且, 员工类别、行业属性和文化背景具有一定的调节作用。研究结论表明人与AI协作系统具有双刃剑效应, 既可以通过人工智能信任提升员工工作效能, 也能够通过工作不安全感降低员工工作效能, 且积极效应强于消极效应。本研究在资源保存理论的框架下, 明晰了人与AI协作系统对员工工作效能的影响机制及其边界条件, 为组织正确看待人与AI协作系统带来的影响, 有效发挥AI价值提供指导。

关键词: 人与AI协作, 工作不安全感, 人工智能信任, 工作绩效, 员工创新

Abstract: The rapid advancement of artificial intelligence (AI) has profoundly reshaped social structures and production models. Its widespread integration within organizations has attracted increasing scholarly attention regarding its influence on employees' work effectiveness. However, the academic community has yet to reach a consensus on how and under what circumstances human-AI collaboration systems affect employees' work effectiveness. The conclusions of existing studies remain inconsistent, reflecting the complexity of human-AI interaction dynamics. Although some research has explored the mechanisms through which human-AI collaboration influences work effectiveness, most studies have focused primarily on either positive or negative consequences, without thoroughly examining the “double-edged sword” effect of human-AI collaboration systems or the boundary conditions under which these effects occur.
To systematically investigate the effects and underlying mechanisms of human-AI collaboration systems on employee work effectiveness, this study conducted a comprehensive meta-analysis synthesizing findings from 79 domestic and international studies, encompassing 106 independent samples (n = 54,726). The analysis reveals that human-AI collaboration, AI autonomy, AI anthropomorphism, and employees' KSAs (knowledge, skills, and abilities) exert significant positive effects on work effectiveness, representing “opportunities”. Conversely, AI awareness exerts a negative effect, perceived as a “threat”. Furthermore, the study identifies AI trust and job insecurity as key mediating variables that jointly explain the dual pathways through which human-AI collaboration influences employees' work effectiveness. Moreover, in this process, as a gain-oriented psychological resource, AI trust exerts a stronger and more stable mediating effect than job insecurity, which functions as a loss-oriented mechanism. This dual mediation framework illustrates the coexistence of “opportunity” and “threat” mechanisms within human-AI collaboration systems.
The results also demonstrate the presence of several moderating factors, including employee categories, industry characteristics, and cultural contexts, which shape the strength of these effects. Specifically, human-AI collaboration exhibits a stronger positive influence on employee innovation among knowledge workers (compared with non-knowledge workers) and within high-technology industries (compared with manufacturing and service sectors). When examining job performance, the positive effect of human-AI collaboration is more pronounced among non-knowledge workers, within high-technology industries, and in Western cultural contexts than in Eastern ones.
Overall, the findings substantiate the double-edged sword effect of human-AI collaboration systems. On the one hand, such systems enhance employees' work effectiveness through mechanisms of AI trust; on the other hand, they can reduce effectiveness through mechanisms of job insecurity. Importantly, the meta-analytic evidence indicates that the positive effects outweigh the negative ones, suggesting that with appropriate organizational design and management, the benefits of AI-enabled collaboration can be maximized while its risks can be mitigated.
Theoretically, this study is grounded in the Conservation of Resources (COR) theory, which provides a robust framework for understanding how individuals strive to acquire, maintain, and protect valuable resources in the face of technological change. By situating human-AI collaboration within this theoretical lens, the study clarifies the resource-based mechanisms underlying the observed opportunity-threat duality. Practically, the findings offer actionable insights for organizations aiming to implement AI technologies responsibly, emphasizing the importance of fostering employee trust in AI systems, strengthening KSAs through training, and reducing job insecurity through supportive management practices.
In summary, this research contributes to the literature by (1) providing an integrated empirical synthesis through meta-analysis to reconcile prior inconsistent findings, (2) elucidating the dual pathways of AI trust and job insecurity through which human-AI collaboration affects work effectiveness, and (3) identifying critical boundary conditions that determine when and for whom AI serves as a performance enhancer or inhibitor. The results not only advance theoretical understanding of human-AI collaboration in the workplace but also offer practical guidance for organizations seeking to harness AI's transformative potential while safeguarding employee well-being and productivity.

Key words: human-AI collaboration, job insecurity, AI trust, job performance, employee innovation