AI credibility and consumer-AI experiences: a conceptual framework

IF 3.9 3区 管理学 Q2 BUSINESS
Abdul Wahid Khan, Abhishek Mishra
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引用次数: 0

Abstract

Purpose

This 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/approach

This study employs a conceptual development approach to propose relationships among constructs, supported by 34 semi-structured consumer interviews.

Findings

This 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/implications

This 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 implications

The authors guide marketers with ways to improve the four consumer-AI experiences by enhancing consumers' perceived AI credibility.

Originality/value

This study uses SCT to define AI credibility and takes a justice theory perspective to develop the conceptual framework.

人工智能可信度和消费者-人工智能体验:一个概念框架
目的本研究旨在概念化感知人工智能(AI)可信度与消费者人工智能体验的关系。随着人工智能在营销和服务领域的广泛应用,消费者人工智能体验已成为营销领域的一个新兴研究领域。已经研究了影响消费者人工智能体验的各种因素,但一个关键因素-感知人工智能可信度的探索相对不足,作者的目标是设想和概念化。设计/方法/方法本研究采用概念发展方法来提出构式之间的关系,并得到34个半结构化消费者访谈的支持。本研究使用来源可信度理论(SCT)定义人工智能可信度。本研究的概念框架显示了感知人工智能可信度如何积极影响四种消费者人工智能体验:(1)数据捕获,(2)分类,(3)授权和(4)社会互动。知觉正义被提议调解这种影响。改进的消费者人工智能体验可以让消费者对支持人工智能的产品产生有利的结果,比如分享数据、听从建议、委派任务和更多互动的意愿。个人和情境调节者限制了人工智能可信度对消费者人工智能体验的积极影响。研究局限/启示本研究有助于人工智能可信度和消费者人工智能体验的新兴研究,这些研究可能会改善消费者人工智能体验。本研究提供了一个包含结果、机制和调节因子的综合模型,以指导未来的研究。实际意义作者指导营销人员通过提高消费者感知的人工智能可信度来改善四种消费者人工智能体验。原创性/价值本研究使用SCT定义人工智能可信度,并以正义理论的视角构建概念框架。
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
8.00
自引率
15.20%
发文量
29
期刊介绍: Formerly known as Managing Service Quality – Impact Factor: 1.286 (2015) – the Journal of Service Theory and Practice (JSTP) aims to publish research in the field of service management that not only makes a theoretical contribution to the service literature, but also scrutinizes and helps improve industry practices by offering specific recommendations and action plans to practitioners. Recognizing the importance of the service sector across the globe, the journal encourages submissions from and/or studying issues from around the world. JSTP gives prominence to research based on real world data, be it quantitative or qualitative. The journal also encourages the submission of strong conceptual and theoretical papers that make a substantive contribution to the scholarly literature in service management. JSTP publishes double-blind peer reviewed papers and encourages submissions from both academics and practitioners. The changing social structures and values, as well as new developments in economic, political, and technological fields are creating sea-changes in the philosophy, strategic aims, operational practices, and structures of many organizations. These changes are particularly relevant to the service sector, as public demand for high standards increases, and organizations fight for both market share and public credibility. The journal specifically addresses solutions to these challenges from a global, multi-cultural, and multi-disciplinary perspective.
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