AI credibility and consumer-AI experiences: a conceptual framework

被引:9
|
作者
Khan, Abdul Wahid [1 ]
Mishra, Abhishek [1 ]
机构
[1] Indian Inst Management Indore, Dept Mkt, Indore, India
关键词
AI credibility; Consumer-AI experience; Source credibility theory; Justice theory; Personalization; Customization; ARTIFICIAL-INTELLIGENCE; CUSTOMER EXPERIENCE; BRAND RELATIONSHIPS; SERVICE RECOVERY; DECISION-MAKING; ADOPTION; JUSTICE; PERCEPTIONS; FAIRNESS; PERSONALIZATION;
D O I
10.1108/JSTP-03-2023-0108
中图分类号
F [经济];
学科分类号
02 ;
摘要
PurposeThis study aims to conceptualize the relationship of perceived artificial intelligence (AI) credibility with consumer-AI experiences. With the widespread deployment of AI in marketing and services, consumer-AI experiences are common and an emerging research area in marketing. Various factors affecting consumer-AI experiences have been studied, but one crucial factor - perceived AI credibility is relatively underexplored which the authors aim to envision and conceptualize.Design/methodology/approachThis study employs a conceptual development approach to propose relationships among constructs, supported by 34 semi-structured consumer interviews.FindingsThis study defines AI credibility using source credibility theory (SCT). The conceptual framework of this study shows how perceived AI credibility positively affects four consumer-AI experiences: (1) data capture, (2) classification, (3) delegation, and (4) social interaction. Perceived justice is proposed to mediate this effect. Improved consumer-AI experiences can elicit favorable consumer outcomes toward AI-enabled offerings, such as the intention to share data, follow recommendations, delegate tasks, and interact more. Individual and contextual moderators limit the positive effect of perceived AI credibility on consumer-AI experiences.Research limitations/implicationsThis study contributes to the emerging research on AI credibility and consumer-AI experiences that may improve consumer-AI experiences. This study offers a comprehensive model with consequences, mechanism, and moderators to guide future research.Practical implicationsThe authors guide marketers with ways to improve the four consumer-AI experiences by enhancing consumers' perceived AI credibility.Originality/valueThis study uses SCT to define AI credibility and takes a justice theory perspective to develop the conceptual framework.
引用
收藏
页码:66 / 97
页数:32
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