Effects of cognitive absorption on continuous use intention of AI-driven recommender systems in e-commerce

IF 2.3 Q3 REGIONAL & URBAN PLANNING Foresight Pub Date : 2022-05-20 DOI:10.1108/fs-10-2021-0200
Nirmal Acharya, Anne-Marie Sassenberg, J. Soar
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引用次数: 1

Abstract

Purpose The applications of artificial intelligence (AI), natural language processing and machine learning in e-commerce are growing. Recommender systems (RSs) are interaction-based technologies based on AI that can offer recommendations for products for use or of interest to a potential consumer. Curiosity, focused immersion and temporal dissociation are often treated as the dimensions of cognitive absorption, so exploring them separately can provide valuable insights into their dynamics. The paper aims to determine the effect of the cognitive absorption dimensions namely focused immersion, temporal dissociation and curiosity independently on RSs continuous use intention. Design/methodology/approach A quantitative research design was used to explore the effect of dimensions of cognitive absorption on AI-driven RSs continuous use intention in e-commerce. Data were gathered from 452 active users of Amazon through an online cross-sectional survey and were analysed using partial least squares structural equation modelling. Findings The findings indicated that curiosity and focused immersion directly affect RSs continuous use intention, but temporal dissociation does not affect RSs continuous use intention. Originality/value The current research focused on Amazon’s RSs that use AI and machine learning techniques. The research aimed to empirically explore the effects of the dimensions of cognitive absorption separately on AI-driven RSs continuous use intention in e-commerce. This research may be of interest to executives working in both public and private industries to better harness the potential of recommendations driven by AI to maximize RSs’ reuse and to enhance customer loyalty.
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认知吸收对电子商务中ai驱动推荐系统持续使用意愿的影响
人工智能(AI)、自然语言处理和机器学习在电子商务中的应用越来越多。推荐系统(RSs)是基于人工智能的交互式技术,可以为潜在消费者提供使用或感兴趣的产品推荐。好奇心、专注沉浸和时间分离通常被视为认知吸收的维度,因此分别探索它们可以提供对其动态的有价值的见解。本研究旨在独立确定专注沉浸、时间解离和好奇心这三个认知吸收维度对RSs持续使用意愿的影响。设计/方法/途径采用定量研究设计,探讨认知吸收维度对电子商务中人工智能驱动RSs持续使用意愿的影响。通过在线横断面调查从452名亚马逊活跃用户中收集数据,并使用偏最小二乘结构方程模型进行分析。研究结果表明,好奇心和专注沉浸直接影响RSs持续使用意愿,而时间解离对RSs持续使用意愿没有影响。目前的研究主要集中在亚马逊使用人工智能和机器学习技术的RSs上。本研究旨在分别实证探讨认知吸收维度对电子商务中人工智能驱动RSs持续使用意愿的影响。这项研究可能会引起公共和私营行业高管的兴趣,以更好地利用人工智能驱动的推荐潜力,最大限度地提高RSs的重用率,并提高客户忠诚度。
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来源期刊
Foresight
Foresight REGIONAL & URBAN PLANNING-
CiteScore
5.10
自引率
5.00%
发文量
45
期刊介绍: ■Social, political and economic science ■Sustainable development ■Horizon scanning ■Scientific and Technological Change and its implications for society and policy ■Management of Uncertainty, Complexity and Risk ■Foresight methodology, tools and techniques
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