聊天机器人在客户购买过程中建立了“人性化”吗?通过解释性顺序设计进行调查

Yogesh K. Dwivedi, Janarthanan Balakrishnan, A. Baabdullah, Ronnie Das
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摘要

聊天机器人结合了各种行为和心理营销元素,以满足客户在购买过程中的不同阶段。本研究遵循精化可能性模型(ELM)的基础,并研究认知和外围线索如何影响体验维度,从而导致聊天机器人用户推荐意图。本研究采用稳健的解释序列混合方法设计,将热情和能力作为购买和购买后阶段的中介变量。研究人员采用3 × 3因子设计,收集了购买阶段的354份问卷和购买后阶段的286份问卷,对提出的概念模型进行了检验和验证。在第二阶段,他们进行了深入的定性访谈(研究2),以进一步了解实验研究(研究1)的有效性。研究1的结果表明,“认知线索”和“能力”显著影响聊天机器人用户的推荐意图。另一方面,“周边线索”和温暖显著地促进了购买阶段遇到的积极体验。研究人员通过探索性研究进一步确定了69个主题代码,对变量有了更深入的了解。从理论上讲,本研究通过在数字化转型的核心引入人机交互的新维度来扩展ELM。从管理的角度来看,该研究强调了在聊天机器人开发中加入“人性化”元素的重要性,以主动创造更有吸引力和积极的客户体验。
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Do chatbots establish “humanness” in the customer purchase journey? An investigation through explanatory sequential design
Chatbots incorporate various behavioral and psychological marketing elements to satisfy customers at various stages of their purchase journey. This research follows the foundations of the Elaboration Likelihood Model (ELM) and examines how cognitive and peripheral cues impact experiential dimensions, leading to chatbot user recommendation intentions. The study introduced warmth and competence as mediating variables in both the purchase and postpurchase stages, utilizing a robust explanatory sequential mixed‐method research design. The researchers tested and validated the proposed conceptual model using a 3 × 3 factorial design, collecting 354 responses in the purchase stage and 286 responses in the postpurchase stage. In the second stage, they conducted in‐depth qualitative interviews (Study 2) to gain further insights into the validity of the experimental research (Study 1). The results obtained from Study 1 revealed that “cognitive cues” and “competence” significantly influence recommendation intentions among chatbot users. On the other hand, “peripheral cues” and warmth significantly contribute to positive experiences encountered during the purchase stage. The researchers further identified 69 thematic codes through exploratory research, providing a deeper understanding of the variables. Theoretically, this study extends the ELM by introducing new dimensions to human‐machine interactions at the heart of digital transformation. From a managerial standpoint, the study emphasizes the significance of adding a “humanness” element in chatbot development to create more engaging and positive customer experiences actively.
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