论文标题
在Instagram上表征和检测赞助的有影响力的帖子
Characterising and Detecting Sponsored Influencer Posts on Instagram
论文作者
论文摘要
近年来,出现了一种新的广告活动形式:涉及所谓社交媒体影响者的广告活动。这些有影响力的人接受金钱,以换取通过社交媒体供稿推广产品。尽管这构成了一种新的有趣的营销形式,但它也提出了许多问题,尤其是与透明度和监管有关的问题。例如,有时不清楚哪些帐户是正式影响者,甚至是什么构成有影响力的人/广告。这对于建立影响者的完整性并确保遵守广告法规很重要。我们收集了一个大规模的Instagram数据集,其中涵盖了数千个帐户广告产品,并根据所涉及的用户数量创建分类。然后,我们对这些帐户所宣传的产品的类型,其潜在影响力以及他们从追随者获得的参与度提供了详细的分析。根据我们的发现,我们培训机器学习模型,以区分赞助内容和非赞助的内容,并确定人们正在生成赞助帖子而无需正式标记它们的情况。我们的发现为理解在线影响者的研究不足的空间提供了第一步,这对研究人员,营销人员和政策制定者可能有用。
Recent years have seen a new form of advertisement campaigns emerge: those involving so-called social media influencers. These influencers accept money in return for promoting products via their social media feeds. Although this constitutes a new and interesting form of marketing, it also raises many questions, particularly related to transparency and regulation. For example, it can sometimes be unclear which accounts are officially influencers, or what even constitutes an influencer/advert. This is important in order to establish the integrity of influencers and to ensure compliance with advertisement regulation. We gather a large-scale Instagram dataset covering thousands of accounts advertising products, and create a categorisation based on the number of users they reach. We then provide a detailed analysis of the types of products being advertised by these accounts, their potential reach, and the engagement they receive from their followers. Based on our findings, we train machine learning models to distinguish sponsored content from non-sponsored, and identify cases where people are generating sponsored posts without officially labelling them. Our findings provide a first step towards understanding the under-studied space of online influencers that could be useful for researchers, marketers and policymakers.