Department of Applied Informatics and Mathematics in Economics, Nicolaus Copernicus University, Toruń, Poland.
Department of Financial Management, Nicolaus Copernicus University, Toruń, Poland.
PLoS One. 2024 May 6;19(5):e0302359. doi: 10.1371/journal.pone.0302359. eCollection 2024.
The banking sector is increasingly recognising the need to implement robo-advisory. The introduction of this service may lead to increased efficiency of banks, improved quality of customer service, and a strengthened image of banks as innovative institutions. Robo-advisory uses data relating to customers, their behaviors and preferences obtained by banks from various communication channels. In the research carried out in the work, an attempt was made to obtain an answer to the question whether the data collected by banks can also be used to determine the degree of consumer interest in this type of service. This is important because the identification of customers interested in the service will allow banks to direct a properly prepared message to a selected group of addressees, increasing the effectiveness of their promotional activities. The aim of the article is to construct and examine the effectiveness of predictive models of consumer acceptance of robo-advisory services provided by banks. Based on the authors' survey on the use of artificial intelligence technology in the banking sector in Poland, in this article we construct tree-based models to predict customers' attitudes towards using robo-advisory in banking services using, as predictors, their socio-demographic characteristics, behaviours and attitudes towards modern digital technologies, experience in using banking services, as well as trust towards banks. In our study, we use selected machine learning algorithms, including a decision tree and several tree-based ensemble models. We showed that constructed models allow to effectively predict consumer acceptance of robo-advisory services.
银行业越来越认识到实施机器人顾问服务的必要性。引入这项服务可能会提高银行的效率,改善客户服务质量,并增强银行作为创新机构的形象。机器人顾问服务使用银行从各种通信渠道获得的与客户、他们的行为和偏好相关的数据。在本工作中进行的研究试图回答一个问题,即银行收集的数据是否也可以用于确定消费者对这种服务的兴趣程度。这很重要,因为识别对服务感兴趣的客户将使银行能够将精心准备的信息定向发送给选定的收件人群体,从而提高其促销活动的效果。本文的目的是构建和检验预测银行提供的机器人顾问服务消费者接受度的预测模型的有效性。基于作者对波兰银行业使用人工智能技术的调查,本文使用决策树和几种基于树的集成模型,构建了基于客户的社会人口特征、对现代数字技术的行为和态度、使用银行服务的经验以及对银行的信任等预测因子,来预测客户对银行服务中使用机器人顾问的态度。在我们的研究中,我们使用了选定的机器学习算法,包括决策树和几种基于树的集成模型。我们表明,构建的模型可以有效地预测消费者对机器人顾问服务的接受度。