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A Study on Story propose model based on Machine Learning - Focused on YouTube

초록

영어

YouTube is an OTT service that leads the home economy, which has emerged from the 2020 Corona Pandemic. With the growth of OTT-based individual media, creators are required to establish attractive storytelling strategies that can be preferred by viewers and elected for YouTube recommendation algorithms. In this study, we conducted a study on modeling that proposes a content storyline for creators. As the ability for Creators to create content that viewers prefer, we have presented the data literacy ability to find patterns in complex and massive data. We also studied the importance of compelling storytelling configurations that viewers prefer and can be selected for YouTube recommendation algorithms. This study is of great significance in that it deviated from the viewer-oriented recommendation system method and proposed a story suggestion model for individual creaters. As a result of incorporating this story proposal model into the production of the YouTube channel Tiger Love video, it showed a certain effectiveness. This story suggestion model is a machine learning text-based story suggestion system, excluding the application of photography or video.

목차

Abstract
1. Introduction
2. Data Literacy
2.1. Data Literacy
2.2. Factors required of creators to improve Data Literacy
3. YouTube story suggestion model based on machine learning
3.1. Story Proposal Modeling Method
3.2. Story Proposal System Application Technology and Operation Process
3.3. Story Proposal System Application Examples and Results Analysis
4. Conclusion
References

저자정보

  • Sanghun CHUN Doctor Candidate, Department of IT Convergence, Hansei University, Korea
  • Seung-Jung SHIN Professor, Department of ICT, Hansei University, Korea

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