Customer Emotions in Service Robot Encounters: A Hybrid Machine-Human Intelligence Approach

IF 9.8 2区 管理学 Q1 BUSINESS Journal of Service Research Pub Date : 2022-05-28 DOI:10.1177/10946705221103937
Raffaele Filieri, Zhibin Lin, Yulei Li, Xiaoqian Lu, Xingwei Yang
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引用次数: 26

Abstract

Understanding consumer emotions arising from robot-customers encounters and shared through online reviews is critical for forecasting consumers’ intention to adopt service robots. Qualitative analysis has the advantage of generating rich insights from data, but it requires intensive manual work. Scholars have emphasized the benefits of using algorithms for recognizing and differentiating among emotions. This study critically addresses the advantages and disadvantages of qualitative analysis and machine learning methods by adopting a hybrid machine-human intelligence approach. We extracted a sample of 9707 customers reviews from two major social media platforms (Ctrip and TripAdvisor), encompassing 412 hotels in 8 countries. The results show that the customer experience with service robots is overwhelmingly positive, revealing that interacting with robots triggers emotions of joy, love, surprise, interest, and excitement. Discontent is mainly expressed when customers cannot use service robots due to malfunctioning. Service robots trigger more emotions when they move. The findings further reveal the potential moderation effect of culture on customer emotional reactions to service robots. The study highlights that the hybrid approach can take advantage of the scalability and efficiency of machine learning algorithms while overcoming its shortcomings, such as poor interpretative capacity and limited emotion categories.
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服务机器人遭遇中的顾客情感:一种机器-人类混合智能方法
了解消费者在机器人与顾客的接触中产生的情绪,以及通过在线评论分享的情绪,对于预测消费者采用服务机器人的意愿至关重要。定性分析具有从数据中生成丰富见解的优势,但它需要大量的手工工作。学者们强调了使用算法识别和区分情绪的好处。本研究通过采用混合机器-人类智能方法,批判性地解决了定性分析和机器学习方法的优缺点。我们从两个主要的社交媒体平台(携程和猫途鹰)上提取了9707条客户评论样本,涵盖了8个国家的412家酒店。结果显示,服务机器人的客户体验是非常积极的,揭示了与机器人的互动引发了喜悦、爱、惊喜、兴趣和兴奋的情绪。顾客的不满主要表现在服务机器人因故障无法使用时。服务机器人在移动时会引发更多的情感。研究结果进一步揭示了文化对顾客对服务机器人的情绪反应的潜在调节作用。该研究强调,混合方法可以利用机器学习算法的可扩展性和效率,同时克服其缺点,例如解释能力差和情感类别有限。
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来源期刊
CiteScore
20.30
自引率
6.50%
发文量
28
期刊介绍: The Journal of Service Research (JSR) is recognized as the foremost service research journal globally. It is an indispensable resource for staying updated on the latest advancements in service research. With its accessible and applicable approach, JSR equips readers with the essential knowledge and strategies needed to navigate an increasingly service-oriented economy. Brimming with contributions from esteemed service professionals and scholars, JSR presents a wealth of articles that offer invaluable insights from academia and industry alike.
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