Social media influencers, product placement and network engagement: using AI image analysis to empirically test relationships

IF 4.2 3区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Industrial Management & Data Systems Pub Date : 2021-09-15 DOI:10.1108/imds-02-2021-0093
Richard N. Rutter, S. Barnes, S. Roper, J. Nadeau, F. Lettice
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引用次数: 13

Abstract

PurposeThis research tests empirically the level of consumer engagement with a product via a nonbrand-controlled platform. The authors explore how social media influencers and traditional celebrities are using products within their own social media Instagram posts and how well their perceived endorsement of that product engages their network of followers.Design/methodology/approachA total of 226,881 posts on Instagram were analyzed using the Inception V3 convolutional neural network (CNN) pre-trained on the ImageNet dataset to identify product placement within the Instagram images of 75 of the world's most important social media influencers. The data were used to empirically test the relationships between influencers, product placement and network engagement and efficiency.FindingsInfluencers achieved higher network engagement efficiencies than celebrities; however, celebrity reach was important for engagement overall. Specialty influencers, known for their “subject” expertise, achieved better network engagement efficiency for related product categories. The highest level of engagement efficiency was achieved by beauty influencers advocating and promoting cosmetic and beauty products.Practical implicationsTo maximize engagement and return on investment, manufacturers, retailers and brands must ensure a close fit between the product type and category of influencer promoting a product within their social media posts.Originality/valueMost research to date has focused on brand-controlled social media accounts. This study focused on traditional celebrities and social media influencers and product placement within their own Instagram posts to extend understanding of the perception of endorsement and subsequent engagement with followers. The authors extend the theory of network effects to reflect the complexity inherent in the context of social media influencers.
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社交媒体影响者、产品植入和网络参与:使用人工智能图像分析来实证检验关系
目的:本研究通过非品牌控制平台实证检验消费者对产品的参与程度。作者探讨了社交媒体影响者和传统名人如何在他们自己的社交媒体Instagram帖子中使用产品,以及他们对该产品的认可在多大程度上吸引了他们的追随者网络。设计/方法/方法使用在ImageNet数据集上预训练的Inception V3卷积神经网络(CNN)分析了Instagram上总共226,881个帖子,以识别75个世界上最重要的社交媒体影响者的Instagram图像中的产品植入。这些数据用于实证检验网红、植入式广告和网络参与与效率之间的关系。研究发现:网红的网络参与效率高于名人;然而,从整体上看,名人影响力对用户粘性很重要。专业网红以其“学科”专长而闻名,在相关产品类别上取得了更好的网络参与效率。参与效率最高的是倡导和推广化妆品和美容产品的美妆网红。为了最大限度地提高参与度和投资回报,制造商、零售商和品牌必须确保在其社交媒体帖子中推广产品的影响者的产品类型和类别之间的紧密匹配。迄今为止,大多数研究都集中在品牌控制的社交媒体账户上。这项研究的重点是传统名人和社交媒体影响者,以及他们在自己的Instagram帖子中植入产品,以扩大对代言和随后与粉丝互动的感知的理解。作者扩展了网络效应理论,以反映社交媒体影响者背景下固有的复杂性。
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来源期刊
Industrial Management & Data Systems
Industrial Management & Data Systems 工程技术-工程:工业
CiteScore
9.60
自引率
10.90%
发文量
115
审稿时长
3 months
期刊介绍: The scope of IMDS cover all aspects of areas that integrates both operations management and information systems research, and topics include but not limited to, are listed below: Big Data research; Data analytics; E-business; Production planning and scheduling; Logistics and supply chain management; New technology acceptance and diffusion; Marketing of new industrial products and processes; Sustainable supply chain management; Green information systems; IS strategies; Knowledge management; Innovation management; Performance measurement; Social media in businesses
期刊最新文献
Benefit and risk evaluation of inland nuclear generation investment in Kazakhstan combined with an analytical MGT method Social media influencers, product placement and network engagement: using AI image analysis to empirically test relationships Understanding the differences across data quality classifications: a literature review and guidelines for future research Investigating the role of social identification on impulse buying in mobile social commerce: a cross-cultural comparison Exploring the paths to big data analytics implementation success in banking and financial service: an integrated approach
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