EXPRESS: The Caring Machine: Feeling AI for Customer Care

IF 11.5 1区 管理学 Q1 BUSINESS
Ming-Hui Huang, R. Rust
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引用次数: 0

Abstract

Customer care is important for its role in relationship-building. This role has traditionally been performed by human customer agents, given the less mature feeling intelligence of AI. The emergence of interactive generative AI (GenAI) shows the potential for using AI for customer care in such emotionally charged interactions. Bridging practice and the academic literatures in marketing and computer science, this paper develops an AI-enabled customer care journey, beginning from accurate emotion recognition to empathetic response, emotional management support, and finally, the establishment of an emotional connection. Marketing requirements for each of the stages are derived from in-depth top manager interviews and a CMO survey. By juxtaposing these requirements against the current feeling capabilities of GenAI, the technological challenges that need to be tackled by engineers are highlighted. This paper wraps up with a set of marketing tenets for implementing and researching the caring machine. These marketing tenets encompass verifying emotion recognition accuracy using marketing emotion theories through multiple emotion signals and methods, utilizing prompt engineering to let customers reveal their thinking and feeling to enhance emotion understanding, employing “response engineering” for knowledge of customer preferences to personalize emotion management recommendation, and strategically deploying GenAI for emotional connection to simultaneously enhance customer emotional well-being and customer lifetime value.
快讯关爱机器:感受人工智能的客户服务
客户服务在建立关系方面发挥着重要作用。由于人工智能的情感智能还不够成熟,这一角色传统上一直由人类客户代理承担。交互式生成人工智能(GenAI)的出现表明,在这种充满情感的互动中,人工智能在客户关怀方面大有可为。在市场营销和计算机科学的实践与学术文献之间架起一座桥梁,本文开发了一个人工智能客户关怀之旅,从准确的情感识别开始,到移情响应、情感管理支持,最后到建立情感联系。每个阶段的营销要求都是通过深入的高层经理访谈和 CMO 调查得出的。通过将这些要求与 GenAI 当前的情感能力并列,突出了工程师需要应对的技术挑战。本文最后提出了一套实施和研究关爱机器的营销原则。这些营销原则包括:利用营销情感理论,通过多种情感信号和方法验证情感识别的准确性;利用提示工程,让客户表露自己的想法和感受,以增强情感理解;利用 "响应工程",了解客户偏好,以个性化情感管理建议;战略性地部署 GenAI,建立情感联系,以同时提高客户的情感幸福感和客户终身价值。
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
24.10
自引率
5.40%
发文量
49
期刊介绍: Founded in 1936,the Journal of Marketing (JM) serves as a premier outlet for substantive research in marketing. JM is dedicated to developing and disseminating knowledge about real-world marketing questions, catering to scholars, educators, managers, policy makers, consumers, and other global societal stakeholders. Over the years,JM has played a crucial role in shaping the content and boundaries of the marketing discipline.
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