A Preliminary Exploration of YouTubers' Use of Generative-AI in Content
Creation
- URL: http://arxiv.org/abs/2403.06039v1
- Date: Sat, 9 Mar 2024 23:22:56 GMT
- Title: A Preliminary Exploration of YouTubers' Use of Generative-AI in Content
Creation
- Authors: Yao Lyu, He Zhang, Shuo Niu, Jie Cai
- Abstract summary: Content creators increasingly utilize generative artificial intelligence (Gen-AI) to produce imaginative images, AI-generated videos, and articles.
This study initially explores this emerging area through a qualitative analysis of 68 YouTube videos demonstrating Gen-AI usage.
Our research focuses on identifying the content domains, the variety of tools used, the activities performed, and the nature of the final products generated by Gen-AI in the context of user-generated content.
- Score: 23.846550109969378
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Content creators increasingly utilize generative artificial intelligence
(Gen-AI) on platforms such as YouTube, TikTok, Instagram, and various blogging
sites to produce imaginative images, AI-generated videos, and articles using
Large Language Models (LLMs). Despite its growing popularity, there remains an
underexplored area concerning the specific domains where AI-generated content
is being applied, and the methodologies content creators employ with Gen-AI
tools during the creation process. This study initially explores this emerging
area through a qualitative analysis of 68 YouTube videos demonstrating Gen-AI
usage. Our research focuses on identifying the content domains, the variety of
tools used, the activities performed, and the nature of the final products
generated by Gen-AI in the context of user-generated content.
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