服务运营中人与机器的融合:通过人类与生成式人工智能协作增强对在线评论的管理回应

Blending minds and machines in service operations: enhancing managerial responses to online reviews through human-generative AI collaboration

Information Technology and People · 2026
被引 1 · 同刊同年前 7%
ABS 3

中文导读

通过在线实验发现,处理负面评论时由AI初稿加专业人员修改效果最佳,而正面评论仅由专业人员处理更好,为服务管理者优化人机协作提供了指导。

Abstract

Purpose Generative artificial intelligence (GAI) is increasingly embedded in service operations, particularly in crafting managerial responses (MRs) to online negative and positive reviews. Yet, little is known about how firms should optimally allocate responsibilities between human staff and GAI across distinct response tasks, nor how such allocations shape consumer perceptions and downstream behavioral intentions. This study investigates how customers evaluate MRs produced by different agents including humans, GAI and multiple forms of human and GAI collaboration across specific response tasks. Design/methodology/approach We conducted a randomized online experiment. Main effects were examined using ANOVA with data from 879 participants, and the underlying mechanisms were further analyzed using the PROCESS macro with a parallel mediation model. Findings Our findings show that to improve customer satisfaction and increase booking intentions, negative reviews are most effectively addressed through an augmented human approach in which GAI creates an initial draft and experienced professional staff refine it. In contrast, positive reviews are best handled solely by experienced professional staff. Originality/value This study advances knowledge on how to combine GAI with human efforts in service operations, identifies key psychological mechanisms that mediate the effects of different collaboration modes on consumer perceptions and behavioral intentions and offers actionable guidance for service operations managers. The results suggest that GAI should be deployed strategically to augment, rather than replace, human intelligence.

服务运营生成式人工智能在线评论管理消费者行为