YouTube Trend Analysis

Arushi Pathik, Saumya Patni, Vaibhav Patel, Jash Patel, Artika Singh
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Abstract

Nowadays, Online video streaming services are extremely popular. YouTube give facility to their content creators to spread their knowledge, thoughts, and interesting content with users. In YouTube there is a trending section which shows currently most popular videos, ensuring that a video reaches the widest possible audience. Other than those videos rest are unpredictable, with the exception of few viral videos having a large number of views and are guaranteed to be in the trending section. Data analysis and Data mining are critical in today's world, and businesses are improving their operations by using social media. The aim of paper is to investigate YouTube's trending videos data. Users in the app use Views, Comments, Likes, and Dislikes. Classification algorithms like Linear Regression, Decision Tree, many other Machine Learning models can be used by using Python libraries like pandas and matplotlib, to classify and analyze YouTube data, as well as collect useful information.
YouTube趋势分析
如今,在线视频流媒体服务非常受欢迎。YouTube为内容创作者提供了向用户传播知识、思想和有趣内容的便利。在YouTube上有一个趋势部分,显示当前最流行的视频,确保视频到达尽可能广泛的观众。除了那些视频之外,其他视频都是不可预测的,除了一些有大量观看的病毒视频,并且保证在趋势部分。数据分析和数据挖掘在当今世界至关重要,企业正在通过使用社交媒体来改善他们的运营。本文的目的是调查YouTube的趋势视频数据。用户在应用程序中使用视图、评论、喜欢和不喜欢。分类算法,如线性回归,决策树,许多其他机器学习模型可以通过使用Python库(如pandas和matplotlib)来分类和分析YouTube数据,以及收集有用的信息。
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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