My new financial companion! non-linear understanding of Robo-advisory service acceptance

Eugene Cheng-Xi Aw, T. Zha, Stephanie Hui-Wen Chuah
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引用次数: 8

Abstract

ABSTRACT Robo-advisory services are gaining traction and could usher in the next cycle of disruptive change in the financial services industry. Yet, many are reticent to embrace this service innovation for their wealth management. This study probes this phenomenon by examining the interplay among technology characteristics (i.e. performance expectancy, effort expectancy, and perceived security), human-like characteristics (i.e. perceived autonomy, perceived intelligence, and perceived anthropomorphism), and consumer characteristics (i.e. financial literacy and affinity for technology interaction) to explain the acceptance of robo-advisory services. For this purpose, a fuzzy set qualitative comparative analysis and an artificial neural network analysis were performed to uncover the interdependency and complexity of the proposed variables, based on 375 responses collected through a large consumer panel survey in China. The findings revealed the presence of six configurations conducive for high acceptance of robo-advisory services, with perceived anthropomorphism and a combination of perceived effort expectancy and perceived security identified as core conditions. Moreover, according to the artificial neural network analysis, perceived intelligence is the most important determinant of robo-advisory service acceptance. This study challenges the conventional linear and symmetric perspective adopted in prior research.
我的新财务伙伴!机器人咨询服务接受度的非线性理解
机器人咨询服务正获得越来越多的关注,并可能引领金融服务业的下一个颠覆性变革周期。然而,许多人不愿将这种服务创新用于他们的财富管理。本研究通过考察技术特征(即绩效预期、努力预期和感知安全性)、类人特征(即感知自主性、感知智能和感知拟人化)和消费者特征(即金融素养和对技术交互的亲和力)之间的相互作用来探讨这一现象,以解释人们对机器人咨询服务的接受程度。为此,本文采用模糊集定性比较分析和人工神经网络分析方法,通过对中国大型消费者小组调查收集的375个反馈,揭示了所提出变量的相互依赖性和复杂性。调查结果显示,存在六种有助于高度接受机器人咨询服务的配置,其中感知拟人化、感知努力预期和感知安全的组合被确定为核心条件。此外,根据人工神经网络分析,感知智能是机器人咨询服务接受度的最重要决定因素。本研究挑战了以往研究中采用的传统线性和对称视角。
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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