Not transparent and incomprehensible: A qualitative user study of an AI-empowered financial advisory system

Hui Zhu , Eva-Lotta Sallnäs Pysander , Inga-Lill Söderberg
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引用次数: 1

Abstract

AI-empowered and algorithm-driven automated financial advisory systems, also known as Robo-advisors, have been rapidly implemented by service providers and customers in financial service markets. Yet, few empirical studies investigate customers’ experience interacting with fully functional Robo-advisors in real-life scenarios. Also, it is still unknown how the design of the automated system can affect customers’ perception and adoption of this new technology. To mitigate these gaps, 24 participants with different levels of experience and understanding of financial investment were asked to use a Robo-advisor from a retail bank and perform the tasks. By conducting observations and retrospective post-test interviews, we find that participants do not fully perceive the social aspects supposed to be provided by Robo-advisors. The overarching problems are, among others, a lack of transparency and incomprehensible information. This results in distrust of the results generated by this system, which negatively affects customers’ adoption of the investment advice provided by the Robo-advisor. The potential of interactive data visualization is also detected. This work contributes to the understanding of customers regarding their perception and adoption based on their use of a functional Robo-advisor and proposes design takeaways for transparent and comprehensible automated advisory systems in financial service contexts.

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不透明和不可理解:对人工智能财务咨询系统的定性用户研究
人工智能和算法驱动的自动化金融咨询系统,也被称为Robo-advisors,已被金融服务市场的服务提供商和客户迅速实施。然而,很少有实证研究调查客户在现实场景中与功能齐全的机器人顾问互动的体验。此外,目前尚不清楚自动化系统的设计如何影响客户对这项新技术的看法和采用。为了缩小这些差距,24名具有不同经验水平和对金融投资理解的参与者被要求使用来自零售银行的机器人顾问来执行任务。通过观察和回顾性的测试后访谈,我们发现参与者并没有完全理解机器人顾问应该提供的社会方面。最主要的问题之一是缺乏透明度和信息难以理解。这导致了对该系统产生的结果的不信任,这对客户采用Robo-advisor提供的投资建议产生了负面影响。交互式数据可视化的潜力也被发现。这项工作有助于了解客户对功能性Robo-advisor的看法和采用情况,并为金融服务环境中透明和可理解的自动咨询系统提出设计要点。
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来源期刊
Data and information management
Data and information management Management Information Systems, Library and Information Sciences
CiteScore
3.70
自引率
0.00%
发文量
0
审稿时长
55 days
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