K-Means Clustering Video Trending di Youtube Amerika Serikat

K. Widjaja, R. Oetama
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Abstract

Youtube is the most popular video platform in the world today. Successful YouTubers can create videos that are widely viewed by many Youtube users around the world. A lot of viral videos on Youtube came from the United States. But, making viral videos on Youtube is a tough challenge, both for seasoned YouTubers and especially for new YouTubers. This research focuses on discovering the properties of these viral videos by clustering them into distinct clusters. K-Means algorithm is used for the clustering process. The purpose of this clustering process is to look for patterns in the data that were previously unseen. The result shows that the videos are divided into three clusters which are built from 3 variables; views, likes and dislikes. The patterns and insights found in this study can be useful for aspiring video makers who want to achieve success as a Youtuber.
K-Means聚类视频趋势di Youtube america Serikat
Youtube是当今世界上最流行的视频平台。成功的Youtube用户可以制作被世界各地的许多Youtube用户广泛观看的视频。Youtube上的许多热门视频都来自美国。但是,在Youtube上制作病毒式传播视频是一项艰巨的挑战,无论是对经验丰富的youtuber,还是对新youtuber。本研究的重点是通过将这些病毒视频聚类成不同的簇来发现它们的特性。聚类过程采用K-Means算法。这种聚类过程的目的是在数据中寻找以前未见过的模式。结果表明,视频被划分为由3个变量组成的3个聚类;观点,好恶。在这项研究中发现的模式和见解对于那些想要成为Youtuber的有抱负的视频制作者来说是有用的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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