Popularity Prediction of Video Content Over Cloud-Based CDN Using End User Interest

R. Gupta, Shabbir Kurabadwala, P. Tiwari, Ankit Mundra
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Abstract

It is often believed that more is better, but that is not true in the case of data. As online data is increasing briskly, we are not able to handle such enormous data. With the increasing trends of speedy and uninterrupted access to data usage, CDNs have become quite popular in today’s world. However, it has become difficult to store all the content on CDN servers. This paper aims towards optimizing one of the aspects of CDN’s cached data that is video content. We propose a push-based caching approach by finding appropriate popular videos in accordance with a region to improve an end user’s quality of experience. A semi-supervised machine learning approach has been implemented to classify videos as low, medium, or highly popular. Popularity Prediction research has increased in energy lately. In any case, there has been little work done dependent on prior and significant video parameters for popularity prediction purposes. The experimental results show good accuracy, justifying the selection of parameters and the processing associated with them
基于终端用户兴趣的基于云的CDN视频内容流行度预测
人们通常认为越多越好,但就数据而言,情况并非如此。随着在线数据的快速增长,我们无法处理如此庞大的数据。随着对数据使用的快速和不间断访问的日益增长的趋势,cdn在当今世界已经变得非常流行。然而,很难将所有内容存储在CDN服务器上。本文旨在优化CDN缓存数据的一个方面,即视频内容。我们提出了一种基于推送的缓存方法,通过根据区域寻找合适的流行视频来提高最终用户的体验质量。一种半监督的机器学习方法已经实现,可以将视频分类为低、中、高流行度。最近,流行度预测研究越来越活跃。在任何情况下,很少有工作做依赖于先前和重要的视频参数的流行度预测的目的。实验结果表明,该方法具有良好的精度,证明了参数的选择和相关处理是正确的
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