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首页> 外文期刊>Journal of retailing and consumer services >Standing up for or against: A text-mining study on the recommendation of mobile payment apps
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Standing up for or against: A text-mining study on the recommendation of mobile payment apps

机译:站立或反对:移动支付应用程序推荐的文本挖掘研究

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摘要

Mobile payment systems offer enormous potential as alternative payment solutions. However, the diffusion of mobile payments over the years has been less than optimal despite the numerous studies that have explored the reasons for its adoption. Consequently, there is an increased interest in exploring alternative actions for promoting its diffusion, especially user recommendation of the technology. This is because positive recommendations can enormously influence the decisions of potential consumers to use the technology while negative recommendations can increase resistance to it. The few extant studies in this domain have followed the traditional survey approach with hypothetic-deductive reasoning, thus limiting an understanding of factors outside their conceptual models that could influence recommendations. To address this shortcoming, this study uses a qualitative text-mining approach that explores themes from user reviews of mobile payment applications (apps). Using 5955 reviews from 16 mobile payment apps hosted on the Google Play store, this study applied the latent Dirichlet allocation (LDA) text-mining method to extract themes from the reviews that help to explain why users provide positive or negative recommendations about mobile payment systems. A total of 13 themes (i.e. ease of use, usefulness, convenience, security, reliability, satisfaction, transaction speed, time-saving, customer support, output quality, perceived cost, usability and trust) were generated from the LDA model which provides both theoretical and practical insights for advancing mobile payments diffusion and research.
机译:移动支付系统作为替代支付解决方案提供巨大潜力。然而,多年来移动支付的扩散虽然有许多研究已经探索了其采用的原因,但移动支付多年来一直小于最佳。因此,探索促进其扩散的替代行动增加了兴趣,特别是用户的技术推荐。这是因为积极的建议可以极大地影响潜在消费者使用该技术的决定,而负面建议可以增加对其的抵制。该领域的几项现存研究遵循了传统的调查方法,并利用假设演绎推理,从而限制了对可能影响建议的概念模型之外的因素的理解。为了解决这种缺点,本研究采用了一种定性文本挖掘方法,探讨了移动支付应用程序(应用程序)的用户评论的主题。这项研究中使用5955条点评从Google Play Store上托管的16个移动付款应用程序,应用了潜在的Dirichlet分配(LDA)文本挖掘方法,从审查中提取主题,帮助解释为什么用户提供关于移动支付系统的正面或负面建议。总共13个主题(即易用性,有用,便利性,安全性,可靠性,满意度,交易速度,节省时间,客户支持,输出质量,感知成本,可用性和信任)是从提供两者的LDA模型产生的推进移动支付扩散和研究的理论与实践见解。

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