论文标题

YouTube影响者视频中的拆箱参与:一种基于注意的方法

Unboxing Engagement in YouTube Influencer Videos: An Attention-Based Approach

论文作者

Rajaram, Prashant, Manchanda, Puneet

论文摘要

有影响力的营销已成为吸引客户的广泛使用的策略。尽管有影响力的人和品牌伙伴对预测与影响者视频的参与度越来越大,但关于不同视频数据方式在预测参与度中的相对重要性的研究很少。我们使用可解释的深度学习框架来分析长期YouTube影响器视频(跨越文本,音频和视频图像)的非结构化数据,该框架利用模型对视频元素的关注。该框架可以实现强大的样本外预测,然后使用一种新的方法来修剪虚假关联。我们基于预测的结果表明,通过图像(视频图像)或声学(音频)在预测视频参与时,通过单词(文本)(文本)(文本)更为重要。 Interpretation-based findings show that during the critical onset period of a video (first 30 seconds), auditory stimuli (e.g., brand mentions and music) are associated with sentiment expressed in verbal engagement (comments), while visual stimuli (e.g., video images of humans and packaged goods) are linked with sentiment expressed through non-verbal engagement (the thumbs-up/down ratio).我们通过多种方法验证我们的方法,将我们的发现与相关理论联系起来,并讨论对影响者,品牌和机构的影响。

Influencer marketing has become a widely used strategy for reaching customers. Despite growing interest among influencers and brand partners in predicting engagement with influencer videos, there has been little research on the relative importance of different video data modalities in predicting engagement. We analyze unstructured data from long-form YouTube influencer videos - spanning text, audio, and video images - using an interpretable deep learning framework that leverages model attention to video elements. This framework enables strong out-of-sample prediction, followed by ex-post interpretation using a novel approach that prunes spurious associations. Our prediction-based results reveal that "what is said" through words (text) is more important than "how it is said" through imagery (video images) or acoustics (audio) in predicting video engagement. Interpretation-based findings show that during the critical onset period of a video (first 30 seconds), auditory stimuli (e.g., brand mentions and music) are associated with sentiment expressed in verbal engagement (comments), while visual stimuli (e.g., video images of humans and packaged goods) are linked with sentiment expressed through non-verbal engagement (the thumbs-up/down ratio). We validate our approach through multiple methods, connect our findings to relevant theory, and discuss implications for influencers, brands and agencies.

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