影响者营销的多模式后关注分析

Seungbae Kim, Jyun-Yu Jiang, Masaki Nakada, Jinyoung Han, Wei Wang
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引用次数: 20

摘要

近年来,网红营销已成为品牌营销的重要手段。因此,品牌越来越多地利用网红的社交网络来进入利基市场,研究人员一直在研究网红营销的各个方面。然而,由于缺乏可用的影响者数据和/或营销机构的能力有限,品牌经常在寻找和雇用具有特定兴趣/主题的合适影响者进行营销时遇到麻烦。本文提出了一个多模态深度学习模型,该模型使用来自社交媒体帖子的文本和图像信息(i)将网红分类为特定的兴趣/主题(例如,时尚,美容),以及(ii)将他们的帖子分类为某些类别。我们使用注意力机制来选择与网红主题更相关的帖子,从而生成有用的网红表示。我们对从Instagram抓取的数据集进行了实验,Instagram是最受欢迎的网红营销社交媒体。实验结果表明,我们提出的模型在对影响者及其帖子进行分类方面分别达到98%和96%的准确率,显著优于现有的用户分析方法。我们发布了33,935名影响者的影响者数据集,这些影响者基于10,180,500个帖子标记了特定主题,以促进未来的研究。
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Multimodal Post Attentive Profiling for Influencer Marketing
Influencer marketing has become a key marketing method for brands in recent years. Hence, brands have been increasingly utilizing influencers’ social networks to reach niche markets, and researchers have been studying various aspects of influencer marketing. However, brands have often suffered from searching and hiring the right influencers with specific interests/topics for their marketing due to a lack of available influencer data and/or limited capacity of marketing agencies. This paper proposes a multimodal deep learning model that uses text and image information from social media posts (i) to classify influencers into specific interests/topics (e.g., fashion, beauty) and (ii) to classify their posts into certain categories. We use the attention mechanism to select the posts that are more relevant to the topics of influencers, thereby generating useful influencer representations. We conduct experiments on the dataset crawled from Instagram, which is the most popular social media for influencer marketing. The experimental results show that our proposed model significantly outperforms existing user profiling methods by achieving 98% and 96% accuracy in classifying influencers and their posts, respectively. We release our influencer dataset of 33,935 influencers labeled with specific topics based on 10,180,500 posts to facilitate future research.
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