Evaluation and adoption of artificial intelligence in the retail industry

H. Fu, Tien-Hsiang Chang, Sheng-Wei Lin, Ying-Hua Teng, Ying-Zi Huang
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引用次数: 2

Abstract

PurposeThe introduction of artificial intelligence (AI) technology has had a substantial influence on the retail industry. However, AI adoption entails considerable responsibilities and risks for senior managers. In this study, the authors developed an evaluation and selection mechanism for successful AI technology adoption in the retail industry. The multifaceted measurement and identification of critical factors (CFs) can enable retailers to adopt AI technology effectively and maintain a sustainable competitive advantage.Design/methodology/approachThe evaluation and adoption of organisational AI technology involve multifaceted decision-making for management. Therefore, the authors used the analytic network process to develop an AI evaluation framework for calculating the weight and importance of each consideration. An expert questionnaire survey was distributed to senior retail managers and 17 valid responses were obtained. Finally, the Vlse Kriterijumska Optimizacija Kompromisno Resenje (VIKOR) method was used to identify CFs for AI adoption.FindingsThe results revealed five CFs for AI adoption in the retail industry. The findings indicated that after AI adoption, top retail management is most concerned with factors pertaining to business performance and minor concerned about the internal system's functional efficiency. Retailers pay more attention to technology and organisation context, which are matters under the retailers' control, than to external uncontrollable environmental factors.Originality/valueThe authors developed an evaluation framework and identified CFs for AI technology adoption in the retail industry. In terms of practical application, the results of this study can help AI service providers understand the CFs of retailers when adopting AI. Moreover, retailers can use the proposed multifaceted evaluation framework to guide their adoption of AI technology.
人工智能在零售业的评估和应用
人工智能(AI)技术的引入对零售业产生了重大影响。然而,人工智能的采用给高级管理人员带来了相当大的责任和风险。在这项研究中,作者开发了一种评估和选择机制,以成功地在零售业采用人工智能技术。关键因素(CFs)的多方面测量和识别可以使零售商有效地采用人工智能技术并保持可持续的竞争优势。设计/方法/方法组织人工智能技术的评估和采用涉及管理的多方面决策。因此,作者使用分析网络过程开发了一个人工智能评估框架,用于计算每个考虑因素的权重和重要性。通过专家问卷调查,获得了17份有效回复。最后,使用Vlse Kriterijumska Optimizacija Kompromisno Resenje (VIKOR)方法来识别人工智能采用的cf。调查结果揭示了零售行业采用人工智能的五个关键因素。研究结果表明,采用人工智能后,零售高层管理人员最关心的是与业务绩效有关的因素,而不太关心内部系统的功能效率。相对于外部不可控的环境因素,零售商更关注技术和组织环境,这是零售商控制的事情。原创性/价值作者开发了一个评估框架,并确定了零售业采用人工智能技术的CFs。在实际应用方面,本研究的结果可以帮助人工智能服务提供商了解零售商在采用人工智能时的CFs。此外,零售商可以使用提出的多方面评估框架来指导他们采用人工智能技术。
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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