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논문검색

Multi type Data-Driven Approach to Influencer Marketing: Predicting Popularity on YouTube

초록

영어

With the popularization of social media, companies are using it as a new advertising channel to replace traditional advertising channels. As a result, influencer marketing, which utilizes influencers who are highly influential on social media for advertising, is gaining attention. Views are a representative marketing metric, and in this study, we propose a model to predict the number of views of influencer marketing videos using YouTube. To this end, we collected 16,348 influencer marketing videos in the food industry and built a deep learning-based view prediction model using multimodal data such as thumbnails and title text. We also verified the effectiveness of the proposed methodology by performing the same modeling on influencer marketing videos in the tech sector. The results of this study can provide implications for companies and video producers who utilize influencer marketing.

목차

Introduction
Background
Influencer Marketing
Predicting YouTube Video Popularity
YouTube-Based Advertisement
Methods and Experimental Details
Overall Process
Datasets
Data Augmentation
Architecture
Experiment Results
Post-hoc Analysis
Conclusion and Discussion
References
Appendix. A

저자정보

  • Dongha Kim Dept of Library and Information Science, Yonsei University
  • Juan Yun Dept of Industrial & Management Engineering, Korea University
  • Beomgeun Seo Dept of Management Information Systems, Myongji University
  • Hanjun Lee Dept of Management Information Systems, Myongji University

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