Are Recommendation Systems Annoying? An Empirical Study of Assessing the Impacts of AI Characteristics on Technology Well-Being

IF 4.4 3区 管理学 Q2 BUSINESS
Zi Wang, Ruizhi Yuan, Boying Li
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引用次数: 0

Abstract

Recommendation systems—that is, a class of machine learning algorithm tools that filter vendors' offerings based on customer data and automatically recommend or generate personalized predictions—are empowered by artificial intelligence (AI) technology and embedded with AI characteristics; but the potential consequences for customer well-being are greatly overlooked. Hence, this research investigates the impact of AI characteristics on technology well-being (self-efficacy, technology satisfaction, emotional dissonance, and autonomy) through two mechanisms: intuitiveness versus intrusiveness. A literature review which conceptualizes AI characteristics and technology well-being in the recommendation system context is followed by a US-based survey approach which shows that higher levels of information optimization, predictability, human likeness, and customizability lead to higher levels of intuitiveness, whereas only information optimization and human likeness leads to increased intrusiveness. However, both intuitiveness and intrusiveness are found to promote technology well-being in the context of a recommendation system, especially for those more vulnerable individuals who respond positively to intrusiveness. Hence, the conclusion is “the recommendations are not always annoying,” whereby the relationships between AI characteristics and technology well-being are significantly influenced by perceived intrusiveness. These findings help business practitioners to identify how consumers perceive and engage different AI characteristics, and therefore could better take care of technology well-being while boosting AI development.

推荐系统烦人吗?人工智能特征对技术幸福感影响的实证研究
推荐系统——即一类机器学习算法工具,它根据客户数据过滤供应商的产品,并自动推荐或生成个性化预测——由人工智能(AI)技术赋予能力,并嵌入人工智能特征;但对消费者福祉的潜在影响却被大大忽视了。因此,本研究通过直观性与侵入性两种机制探讨人工智能特征对技术幸福感(自我效能感、技术满意度、情绪失调和自主性)的影响。在对推荐系统背景下的人工智能特征和技术健康进行概念化的文献综述之后,美国的一项调查方法表明,更高水平的信息优化、可预测性、人类相似性和可定制性会导致更高水平的直观性,而只有信息优化和人类相似性会导致入侵性增加。然而,我们发现,在推荐系统的背景下,直观性和侵入性都能促进技术的健康,尤其是对于那些对侵入性做出积极反应的更脆弱的个体。因此,结论是“建议并不总是令人讨厌”,即人工智能特征与技术福祉之间的关系受到感知侵入性的显著影响。这些发现有助于商业从业者确定消费者如何感知和参与不同的人工智能特征,因此可以在促进人工智能发展的同时更好地照顾技术福祉。
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
7.30
自引率
11.60%
发文量
99
期刊介绍: The Journal of Consumer Behaviour aims to promote the understanding of consumer behaviour, consumer research and consumption through the publication of double-blind peer-reviewed, top quality theoretical and empirical research. An international academic journal with a foundation in the social sciences, the JCB has a diverse and multidisciplinary outlook which seeks to showcase innovative, alternative and contested representations of consumer behaviour alongside the latest developments in established traditions of consumer research.
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